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Financial economics is the branch of
economics Economics () is the social science that studies the production, distribution, and consumption of goods and services. Economics focuses on the behaviour and interactions of economic agents and how economies work. Microeconomics analyzes ...
characterized by a "concentration on monetary activities", in which "money of one type or another is likely to appear on ''both sides'' of a trade".
William F. Sharpe William Forsyth Sharpe (born June 16, 1934) is an American economist. He is the STANCO 25 Professor of Finance, Emeritus at Stanford University's Graduate School of Business, and the winner of the 1990 Nobel Memorial Prize in Economic Sciences. ...

"Financial Economics"
, in
Its concern is thus the interrelation of financial variables, such as share prices,
interest rate An interest rate is the amount of interest due per period, as a proportion of the amount lent, deposited, or borrowed (called the principal sum). The total interest on an amount lent or borrowed depends on the principal sum, the interest rate, ...
s and exchange rates, as opposed to those concerning the
real economy The real economy concerns the production, purchase and flow of goods and services (like oil, bread and labour) within an economy. It is contrasted with the financial economy, which concerns the aspects of the economy that deal purely in transac ...
. It has two main areas of focus: Merton H. Miller, (1999). The History of Finance: An Eyewitness Account, ''Journal of Portfolio Management''. Summer 1999. asset pricing and corporate finance; the first being the perspective of providers of capital, i.e. investors, and the second of users of capital. It thus provides the theoretical underpinning for much of finance. The subject is concerned with "the allocation and deployment of economic resources, both spatially and across time, in an uncertain environment".See Fama and Miller (1972), ''The Theory of Finance'', in Bibliography. It therefore centers on decision making under uncertainty in the context of the financial markets, and the resultant
economic An economy is an area of the production, distribution and trade, as well as consumption of goods and services. In general, it is defined as a social domain that emphasize the practices, discourses, and material expressions associated with the ...
and
financial model Financial modeling is the task of building an abstraction, abstract representation (a mathematical model, model) of a real world finance, financial situation. This is a mathematical model designed to represent (a simplified version of) the perfor ...
s and principles, and is concerned with deriving testable or policy implications from acceptable assumptions. It thus also includes a formal study of the
financial markets A financial market is a market in which people trade financial securities and derivatives at low transaction costs. Some of the securities include stocks and bonds, raw materials and precious metals, which are known in the financial ma ...
themselves, especially
market microstructure Market microstructure is a branch of finance concerned with the details of how exchange occurs in markets. While the theory of market microstructure applies to the exchange of real or financial assets, more evidence is available on the microstruct ...
and market regulation. It is built on the foundations of microeconomics and
decision theory Decision theory (or the theory of choice; not to be confused with choice theory) is a branch of applied probability theory concerned with the theory of making decisions based on assigning probabilities to various factors and assigning numerical ...
.
Financial econometrics Financial econometrics is the application of statistical methods to financial market data. Financial econometrics is a branch of financial economics, in the field of economics. Areas of study include capital markets, financial institutions, corpo ...
is the branch of financial economics that uses
econometric Econometrics is the application of statistical methods to economic data in order to give empirical content to economic relationships. M. Hashem Pesaran (1987). "Econometrics," '' The New Palgrave: A Dictionary of Economics'', v. 2, p. 8 p. 8 ...
techniques to parameterise the relationships identified. Mathematical finance is related in that it will derive and extend the mathematical or numerical models suggested by financial economics. Whereas financial economics has a primarily microeconomic focus,
monetary economics Monetary economics is the branch of economics that studies the different competing theories of money: it provides a framework for analyzing money and considers its functions (such as medium of exchange, store of value and unit of account), and ...
is primarily
macroeconomic Macroeconomics (from the Greek prefix ''makro-'' meaning "large" + ''economics'') is a branch of economics dealing with performance, structure, behavior, and decision-making of an economy as a whole. For example, using interest rates, taxes, and ...
in nature.


Underlying economics

Financial economics studies how rational investors would apply
decision theory Decision theory (or the theory of choice; not to be confused with choice theory) is a branch of applied probability theory concerned with the theory of making decisions based on assigning probabilities to various factors and assigning numerical ...
to investment management. The subject is thus built on the foundations of microeconomics and derives several key results for the application of decision making under uncertainty to the
financial market A financial market is a market in which people trade financial securities and derivatives at low transaction costs. Some of the securities include stocks and bonds, raw materials and precious metals, which are known in the financial market ...
s. The underlying economic logic yields the
fundamental theorem of asset pricing The fundamental theorems of asset pricing (also: of arbitrage, of finance), in both financial economics and mathematical finance, provide necessary and sufficient conditions for a market to be arbitrage-free, and for a market to be complete. An ...
, which gives the conditions for arbitrage-free asset pricing. The aside formulae result directly. The analysis here is often undertaken assuming a ''
representative agent Economists use the term representative agent to refer to the typical decision-maker of a certain type (for example, the typical consumer, or the typical firm). More technically, an economic model is said to have a representative agent if all agen ...
'', essentially treating all market-participants, " agents", as identical (or, at least, that they act in such a way that the sum of their choices is equivalent to the decision of one individual).


Present value, expectation and utility

Underlying all of financial economics are the concepts of
present value In economics and finance, present value (PV), also known as present discounted value, is the value of an expected income stream determined as of the date of valuation. The present value is usually less than the future value because money has inte ...
and expectation. Calculating their present value X_/r allows the decision maker to aggregate the cashflows (or other returns) to be produced by the asset in the future to a single value at the date in question, and to thus more readily compare two opportunities; this concept is the starting point for financial decision making. An immediate extension is to combine probabilities with present value, leading to the expected value criterion which sets asset value as a function of the sizes of the expected payouts and the probabilities of their occurrence, X_ and p_ respectively. This decision method, however, fails to consider
risk aversion In economics and finance, risk aversion is the tendency of people to prefer outcomes with low uncertainty to those outcomes with high uncertainty, even if the average outcome of the latter is equal to or higher in monetary value than the more c ...
("as any student of finance knows"). In other words, since individuals receive greater
utility As a topic of economics, utility is used to model worth or value. Its usage has evolved significantly over time. The term was introduced initially as a measure of pleasure or happiness as part of the theory of utilitarianism by moral philosoph ...
from an extra dollar when they are poor and less utility when comparatively rich, the approach is to therefore "adjust" the weight assigned to the various outcomes ("states") correspondingly, Y_. See
indifference price In finance, indifference pricing is a method of pricing financial securities with regard to a utility function. The indifference price is also known as the reservation price or private valuation. In particular, the indifference price is the pric ...
. (Some investors may in fact be
risk seeking In accounting, finance, and economics, a risk-seeker or risk-lover is a person who has a preference ''for'' risk. While most investors are considered risk ''averse'', one could view casino-goers as risk-seeking. A common example to explain ris ...
as opposed to risk averse, but the same logic would apply). Choice under uncertainty here may then be characterized as the maximization of
expected utility The expected utility hypothesis is a popular concept in economics that serves as a reference guide for decisions when the payoff is uncertain. The theory recommends which option rational individuals should choose in a complex situation, based on the ...
. More formally, the resulting
expected utility hypothesis The expected utility hypothesis is a popular concept in economics that serves as a reference guide for decisions when the payoff is uncertain. The theory recommends which option rational individuals should choose in a complex situation, based on the ...
states that, if certain axioms are satisfied, the subjective value associated with a gamble by an individual is ''that individual''s statistical expectation of the valuations of the outcomes of that gamble. The impetus for these ideas arise from various inconsistencies observed under the expected value framework, such as the
St. Petersburg paradox The St. Petersburg paradox or St. Petersburg lottery is a paradox involving the game of flipping a coin where the expected payoff of the theoretical lottery game approaches infinity but nevertheless seems to be worth only a very small amount to t ...
and the
Ellsberg paradox In decision theory, the Ellsberg paradox (or Ellsberg's paradox) is a paradox in which people's decisions are inconsistent with subjective expected utility theory. Daniel Ellsberg popularized the paradox in his 1961 paper, “Risk, Ambiguity, an ...
.


Arbitrage-free pricing and equilibrium

The concepts of arbitrage-free, "rational", pricing and equilibrium are then coupled with the above to derive "classical"See Rubinstein (2006), under "Bibliography". (or "neo-classical") financial economics.
Rational pricing Rational pricing is the assumption in financial economics that asset prices - and hence asset pricing models - will reflect the arbitrage-free price of the asset as any deviation from this price will be "arbitraged away". This assumption is use ...
is the assumption that asset prices (and hence asset pricing models) will reflect the arbitrage-free price of the asset, as any deviation from this price will be "arbitraged away". This assumption is useful in pricing fixed income securities, particularly bonds, and is fundamental to the pricing of derivative instruments.
Economic equilibrium In economics, economic equilibrium is a situation in which economic forces such as supply and demand are balanced and in the absence of external influences the ( equilibrium) values of economic variables will not change. For example, in the s ...
is, in general, a state in which economic forces such as supply and demand are balanced, and, in the absence of external influences these equilibrium values of economic variables will not change.
General equilibrium In economics, general equilibrium theory attempts to explain the behavior of supply, demand, and prices in a whole economy with several or many interacting markets, by seeking to prove that the interaction of demand and supply will result in an ov ...
deals with the behavior of supply, demand, and prices in a whole economy with several or many interacting markets, by seeking to prove that a set of prices exists that will result in an overall equilibrium. (This is in contrast to partial equilibrium, which only analyzes single markets.) The two concepts are linked as follows: where market prices do not allow for profitable arbitrage, i.e. they comprise an arbitrage-free market, then these prices are also said to constitute an "arbitrage equilibrium". Intuitively, this may be seen by considering that where an arbitrage opportunity does exist, then prices can be expected to change, and are therefore not in equilibrium. An arbitrage equilibrium is thus a precondition for a general economic equilibrium. The immediate, and formal, extension of this idea, the
fundamental theorem of asset pricing The fundamental theorems of asset pricing (also: of arbitrage, of finance), in both financial economics and mathematical finance, provide necessary and sufficient conditions for a market to be arbitrage-free, and for a market to be complete. An ...
, shows that where markets are as described – and are additionally (implicitly and correspondingly) complete – one may then make financial decisions by constructing a risk neutral probability measure corresponding to the market. "Complete" here means that there is a price for every asset in every possible state of the world, s, and that the complete set of possible bets on future states-of-the-world can therefore be constructed with existing assets (assuming no friction): essentially solving simultaneously for ''n'' (risk-neutral) probabilities, q_, given ''n'' prices. The formal derivation will proceed by arbitrage arguments.Freddy Delbaen and Walter Schachermayer. (2004)
"What is... a Free Lunch?"
(pdf). Notices of the AMS 51 (5): 526–528
For a simplified example see , where the economy has only two possible states – up and down – and where q_ and q_ (=1-q_) are the two corresponding probabilities, and in turn, the derived distribution, or "measure". With this measure in place, the expected, i.e. required, return of any security (or portfolio) will then equal the riskless return, plus an "adjustment for risk", i.e. a security-specific
risk premium A risk premium is a measure of excess return that is required by an individual to compensate being subjected to an increased level of risk. It is used widely in finance and economics, the general definition being the expected risky return less t ...
, compensating for the extent to which its cashflows are unpredictable. All pricing models are then essentially variants of this, given specific assumptions or conditions. This approach is consistent with the above, but with the expectation based on "the market" (i.e. arbitrage-free, and, per the theorem, therefore in equilibrium) as opposed to individual preferences. Thus, continuing the example, in pricing a derivative instrument its forecasted cashflows in the up- and down-states, X_ and X_, are multiplied through by q_ and q_, and are then
discounted Discounting is a financial mechanism in which a debtor obtains the right to delay payments to a creditor, for a defined period of time, in exchange for a charge or fee.See "Time Value", "Discount", "Discount Yield", "Compound Interest", "Efficient ...
at the risk-free interest rate; per the second equation above. In pricing a "fundamental", underlying, instrument (in equilibrium), on the other hand, a risk-appropriate premium over risk-free is required in the discounting, essentially employing the first equation with Y and r combined. In general, this premium may be derived by the
CAPM CAPM may refer to: * Capital asset pricing model, a fundamental model in finance * Certified Associate in Project Management, an entry-level credential for project managers {{Disambig ...
(or extensions) as will be seen under #Uncertainty. The difference is explained as follows: By construction, the value of the derivative will (must) grow at the risk free rate, and, by arbitrage arguments, its value must then be discounted correspondingly; in the case of an option, this is achieved by "manufacturing" the instrument as a combination of the
underlying In finance, a derivative is a contract that ''derives'' its value from the performance of an underlying entity. This underlying entity can be an asset, index, or interest rate, and is often simply called the "underlying". Derivatives can be use ...
and a risk free "bond"; see (and #Uncertainty below). Where the underlying is itself being priced, such "manufacturing" is of course not possible – the instrument being "fundamental", i.e. as opposed to "derivative" – and a premium is then required for risk. (Correspondingly, mathematical finance separates into two analytic regimes: risk and portfolio management (generally) use physical (or actual or actuarial) probability, denoted by "P"; while derivatives pricing uses risk-neutral probability (or arbitrage-pricing probability), denoted by "Q". In specific applications the lower case is used, as in the above equations.)


State prices

With the above relationship established, the further specialized
Arrow–Debreu model In mathematical economics, the Arrow–Debreu model suggests that under certain economic assumptions (convex preferences, perfect competition, and demand independence) there must be a set of prices such that aggregate supplies will equal aggregat ...
may be derived. This result suggests that, under certain economic conditions, there must be a set of prices such that aggregate supplies will equal aggregate demands for every commodity in the economy. The Arrow–Debreu model applies to economies with maximally
complete market In economics, a complete market (aka Arrow-Debreu market or complete system of markets) is a market with two conditions: # Negligible transaction costs and therefore also perfect information, # there is a price for every asset in every possible st ...
s, in which there exists a market for every time period and forward prices for every commodity at all time periods. A direct extension, then, is the concept of a state price security (also called an Arrow–Debreu security), a contract that agrees to pay one unit of a numeraire (a currency or a commodity) if a particular state occurs ("up" and "down" in the simplified example above) at a particular time in the future and pays zero numeraire in all the other states. The price of this security is the ''state price'' \pi_ of this particular state of the world; also referred to as a "Risk Neutral Density". In the above example, the state prices, \pi_, \pi_would equate to the present values of $q_ and $q_: i.e. what one would pay today, respectively, for the up- and down-state securities; the state price vector is the vector of state prices for all states. Applied to derivative valuation, the price today would simply be math>\pi_×X_ + \pi_×X_ the fourth formula (see above regarding the absence of a risk premium here). For a
continuous random variable In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon ...
indicating a continuum of possible states, the value is found by integrating over the state price "density". These concepts are extended to
martingale pricing Martingale pricing is a pricing approach based on the notions of martingale and risk neutrality. The martingale pricing approach is a cornerstone of modern quantitative finance and can be applied to a variety of derivatives contracts, e.g. options ...
and the related
risk-neutral measure In mathematical finance, a risk-neutral measure (also called an equilibrium measure, or '' equivalent martingale measure'') is a probability measure such that each share price is exactly equal to the discounted expectation of the share price u ...
. State prices find immediate application as a conceptual tool ("
contingent claim analysis In finance, a contingent claim is a derivative whose future payoff depends on the value of another “underlying” asset,Dale F. Gray, Robert C. Merton and Zvi Bodie. (2007). Contingent Claims Approach to Measuring and Managing Sovereign Credit Ri ...
"); but can also be applied to valuation problems.See de Matos, as well as Bossaerts and Ødegaard, under bibliography. Given the pricing mechanism described, one can decompose the derivative value – true in fact for "every security" – as a linear combination of its state-prices; i.e. back-solve for the state-prices corresponding to observed derivative prices. These recovered state-prices can then be used for valuation of other instruments with exposure to the underlyer, or for other decision making relating to the underlyer itself. Using the related stochastic discount factor - also called the pricing kernel - the asset price is computed by "discounting" the future cash flow by the stochastic factor \tilde, and then taking the expectation;See: David K. Backus (2015)
Fundamentals of Asset Pricing
Stern NYU
the third equation above. Essentially, this factor divides expected utility at the relevant future period - a function of the possible asset values realized under each state - by the utility due to today's wealth, and is then also referred to as "the intertemporal
marginal rate of substitution In economics, the marginal rate of substitution (MRS) is the rate at which a consumer can give up some amount of one good in exchange for another good while maintaining the same level of utility. At equilibrium consumption levels (assuming no exte ...
".


Resultant models

Applying the above economic concepts, we may then derive various economic- and financial models and principles. As above, the two usual areas of focus are Asset Pricing and Corporate Finance, the first being the perspective of providers of capital, the second of users of capital. Here, and for (almost) all other financial economics models, the questions addressed are typically framed in terms of "time, uncertainty, options, and information", as will be seen below. * Time: money now is traded for money in the future. * Uncertainty (or risk): The amount of money to be transferred in the future is uncertain. * Options: one party to the transaction can make a decision at a later time that will affect subsequent transfers of money. *
Information Information is an abstract concept that refers to that which has the power to inform. At the most fundamental level information pertains to the interpretation of that which may be sensed. Any natural process that is not completely random ...
: knowledge of the future can reduce, or possibly eliminate, the uncertainty associated with future monetary value (FMV). Applying this framework, with the above concepts, leads to the required models. This derivation begins with the assumption of "no uncertainty" and is then expanded to incorporate the other considerations. (This division sometimes denoted " deterministic" and "random", or " stochastic".)


Certainty

The starting point here is "Investment under certainty", and usually framed in the context of a corporation. The
Fisher separation theorem In economics, the Fisher separation theorem asserts that the primary objective of a corporation will be the maximization of its present value, regardless of the preferences of its shareholders. The theorem therefore separates management's "product ...
, asserts that the objective of the corporation will be the maximization of its present value, regardless of the preferences of its shareholders. Related is the
Modigliani–Miller theorem The Modigliani–Miller theorem (of Franco Modigliani, Merton Miller) is an influential element of economic theory; it forms the basis for modern thinking on capital structure. The basic theorem states that in the absence of taxes, bankruptcy c ...
, which shows that, under certain conditions, the value of a firm is unaffected by how that firm is financed, and depends neither on its dividend policy nor its decision to raise capital by issuing stock or selling debt. The proof here proceeds using arbitrage arguments, and acts as a benchmark for evaluating the effects of factors outside the model that do affect value. The mechanism for determining (corporate) value is provided by '' The Theory of Investment Value'', which proposes that the value of an asset should be calculated using "evaluation by the rule of present worth". Thus, for a common stock, the "intrinsic", long-term worth is the present value of its future net cashflows, in the form of
dividend A dividend is a distribution of profits by a corporation to its shareholders. When a corporation earns a profit or surplus, it is able to pay a portion of the profit as a dividend to shareholders. Any amount not distributed is taken to be re-i ...
s. What remains to be determined is the appropriate discount rate. Later developments show that, "rationally", i.e. in the formal sense, the appropriate discount rate here will (should) depend on the asset's riskiness relative to the overall market, as opposed to its owners' preferences; see below.
Net present value The net present value (NPV) or net present worth (NPW) applies to a series of cash flows occurring at different times. The present value of a cash flow depends on the interval of time between now and the cash flow. It also depends on the discount ...
(NPV) is the direct extension of these ideas typically applied to Corporate Finance decisioning. For other results, as well as specific models developed here, see the list of "Equity valuation" topics under .
Bond valuation Bond valuation is the determination of the fair price of a bond. As with any security or capital investment, the theoretical fair value of a bond is the present value of the stream of cash flows it is expected to generate. Hence, the value of a ...
, in that cashflows (coupons and return of principal) are deterministic, may proceed in the same fashion.See Luenberger's ''Investment Science'', under Bibliography. An immediate extension, Arbitrage-free bond pricing, discounts each cashflow at the market derived rate – i.e. at each coupon's corresponding zero-rate – as opposed to an overall rate. In many treatments bond valuation precedes
equity valuation In financial markets, stock valuation is the method of calculating theoretical values of companies and their stocks. The main use of these methods is to predict future market prices, or more generally, potential market prices, and thus to profit fr ...
, under which cashflows (dividends) are not "known" ''per se''. Williams and onward allow for forecasting as to these – based on historic ratios or published policy – and cashflows are then treated as essentially deterministic; see below under #Corporate finance theory. These "certainty" results are all commonly employed under corporate finance; uncertainty is the focus of "asset pricing models", as follows. Fisher's formulation of the theory here - developing an intertemporal equilibrium model - underpins also the below applications to uncertainty. See for the development.


Uncertainty

For "choice under uncertainty" the twin assumptions of rationality and
market efficiency The efficient-market hypothesis (EMH) is a hypothesis in financial economics that states that asset prices reflect all available information. A direct implication is that it is impossible to "beat the market" consistently on a risk-adjusted bas ...
, as more closely defined, lead to
modern portfolio theory Modern portfolio theory (MPT), or mean-variance analysis, is a mathematical framework for assembling a portfolio of assets such that the expected return is maximized for a given level of risk. It is a formalization and extension of diversificati ...
(MPT) with its capital asset pricing model (CAPM) – an ''equilibrium-based'' result – and to the Black–Scholes–Merton theory (BSM; often, simply Black–Scholes) for
option pricing In finance, a price (premium) is paid or received for purchasing or selling options. This article discusses the calculation of this premium in general. For further detail, see: for discussion of the mathematics; Financial engineering for the imple ...
– an ''arbitrage-free'' result. As above, the (intuitive) link between these, is that the latter derivative prices are calculated such that they are arbitrage-free with respect to the more fundamental, equilibrium determined, securities prices; see . Briefly, and intuitively – and consistent with #Arbitrage-free pricing and equilibrium above – the relationship between rationality and efficiency is as follows. Given the ability to profit from
private information Privacy (, ) is the ability of an individual or group to seclude themselves or information about themselves, and thereby express themselves selectively. The domain of privacy partially overlaps with security, which can include the concepts of a ...
, self-interested traders are motivated to acquire and act on their private information. In doing so, traders contribute to more and more "correct", i.e. ''efficient'', prices: the
efficient-market hypothesis The efficient-market hypothesis (EMH) is a hypothesis in financial economics that states that asset prices reflect all available information. A direct implication is that it is impossible to "beat the market" consistently on a risk-adjusted bas ...
, or EMH. Thus, if prices of financial assets are (broadly) efficient, then deviations from these (equilibrium) values could not last for long. (See
earnings response coefficient In financial economics, finance, and accounting, the earnings response coefficient, or ERC, is the estimated relationship between equity returns and the unexpected portion of (i.e., new information in) companies' earnings announcements. Developme ...
.) The EMH (implicitly) assumes that average expectations constitute an "optimal forecast", i.e. prices using all available information are identical to the ''best guess of the future'': the assumption of
rational expectations In economics, "rational expectations" are model-consistent expectations, in that agents inside the model are assumed to "know the model" and on average take the model's predictions as valid. Rational expectations ensure internal consistency i ...
. The EMH does allow that when faced with new information, some investors may overreact and some may underreact, but what is required, however, is that investors' reactions follow a
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
– so that the net effect on market prices cannot be reliably exploited to make an abnormal profit. In the competitive limit, then, market prices will reflect all available information and prices can only move in response to news: the random walk hypothesis. This news, of course, could be "good" or "bad", minor or, less common, major; and these moves are then, correspondingly, normally distributed; with the price therefore following a log-normal distribution. Under these conditions, investors can then be assumed to act rationally: their investment decision must be calculated or a loss is sure to follow; correspondingly, where an arbitrage opportunity presents itself, then arbitrageurs will exploit it, reinforcing this equilibrium. Here, as under the certainty-case above, the specific assumption as to pricing is that prices are calculated as the present value of expected future dividends, Christopher L. Culp and John H. Cochrane. (2003).
"Equilibrium Asset Pricing and Discount Factors: Overview and Implications for Derivatives Valuation and Risk Management"
, in ''Modern Risk Management: A History''. Peter Field, ed. London: Risk Books, 2003.
as based on currently available information. What is required though, is a theory for determining the appropriate discount rate, i.e. "required return", given this uncertainty: this is provided by the MPT and its CAPM. Relatedly, rationality – in the sense of arbitrage-exploitation – gives rise to Black–Scholes; option values here ultimately consistent with the CAPM. In general, then, while portfolio theory studies how investors should balance risk and return when investing in many assets or securities, the CAPM is more focused, describing how, in equilibrium, markets set the prices of assets in relation to how risky they are. This result will be independent of the investor's level of risk aversion and assumed utility function, thus providing a readily determined discount rate for corporate finance decision makers #Certainty, as above,Michael C. Jensen, Jensen, Michael C. and Smith, Clifford W., "The Theory of Corporate Finance: A Historical Overview". In: ''The Modern Theory of Corporate Finance'', New York: McGraw-Hill Inc., pp. 2–20, 1984. and for other investors. The argument Markowitz model, proceeds as follows: If one can construct an efficient frontier – i.e. each combination of assets offering the best possible expected level of return for its level of risk, see diagram – then mean-variance efficient portfolios can be formed simply as a combination of holdings of the Risk-free interest rate, risk-free asset and the "market portfolio" (the Mutual fund separation theorem), with the combinations here plotting as the capital market line, or CML. Then, given this CML, the required return on a risky security will be independent of the investor's utility function, and solely determined by its covariance ("beta") with aggregate, i.e. market, risk. This is because investors here can then maximize utility through leverage as opposed to pricing; see Separation property (finance), and CML diagram aside. As can be seen in the formula aside, this result is consistent with #Arbitrage-free pricing and equilibrium, the preceding, equaling the riskless return plus an adjustment for risk. A more modern, direct, derivation is as described at the bottom of this section; which can be generalized to derive other equilibrium-pricing models. Black–Scholes provides a mathematical model of a financial market containing Derivative (finance), derivative instruments, and the resultant formula for the price of option style, European-styled options. The model is expressed as the Black–Scholes equation, a partial differential equation describing the changing price of the option over time; it is derived assuming log-normal, geometric Brownian motion (see Brownian model of financial markets). The key financial insight behind the model is that one can perfectly hedge the option by buying and selling the underlying asset in just the right way and consequently "eliminate risk", absenting the risk adjustment from the pricing (V, the value, or price, of the option, grows at r, the risk-free rate). This hedge, in turn, implies that there is only one right price – in an arbitrage-free sense – for the option. And this price is returned by the Black–Scholes option pricing formula. (The formula, and hence the price, is consistent with the equation, as the formula is the Partial differential equation#Analytical solutions, solution to the equation.) Since the formula is without reference to the share's expected return, Black–Scholes inheres risk neutrality; intuitively consistent with the "elimination of risk" here, and mathematically consistent with #Arbitrage-free pricing and equilibrium above. Relatedly, therefore, the pricing formula Black–Scholes_model#Derivations, may also be derived directly via risk neutral expectation. Itô's lemma provides Itô's lemma#Black–Scholes formula, the underlying mathematics, and, with Itô calculus more generally, remains fundamental in quantitative finance. As mentioned, it can be shown that the two models are consistent; then, as is to be expected, "classical" financial economics is thus unified. Here, the Black Scholes equation can alternatively be derived from the CAPM, and the price obtained from the Black–Scholes model is thus consistent with the assumptions of the CAPM.Don M. Chance (2008)
"Option Prices and Expected Returns"
Emanuel Derman
''A Scientific Approach to CAPM and Options Valuation''
The Black–Scholes theory, although built on Arbitrage-free pricing, is therefore consistent with the equilibrium based capital asset pricing. Both models, in turn, are ultimately consistent with the Arrow–Debreu theory, and can be derived via state-pricing – essentially, by expanding the fundamental result above – further explaining, and if required demonstrating, this unity.Mark Rubinstein, Rubinstein, Mark. (2005). "Great Moments in Financial Economics: IV. The Fundamental Theorem (Part I)", ''Journal of Investment Management'', Vol. 3, No. 4, Fourth Quarter 2005; ~ (2006). Part II, Vol. 4, No. 1, First Quarter 2006. See under "External links". Here, the CAPM is derived by linking Y, risk aversion, to overall market return, and setting the return on security j as X_j/Price_j; see . The Black-Scholes formula is found, in the limit, by attaching a binomial probability to each of numerous possible spot-prices (states) and then rearranging for the terms corresponding to N(d_1) and N(d_2), per the boxed description; see .


Extensions

More recent work further generalizes and extends these models. As regards asset pricing, developments in equilibrium-based pricing are discussed under "Portfolio theory" below, while "Derivative pricing" relates to risk-neutral, i.e. arbitrage-free, pricing. As regards the use of capital, "Corporate finance theory" relates, mainly, to the application of these models.


Portfolio theory

The majority of developments here relate to required return, i.e. pricing, extending the basic CAPM. Multi-factor models such as the Fama–French three-factor model and the Carhart four-factor model, propose factors other than market return as relevant in pricing. The intertemporal CAPM and Consumption-based capital asset pricing model, consumption-based CAPM similarly extend the model. With intertemporal portfolio choice, the investor now repeatedly optimizes her portfolio; while the inclusion of Consumption (economics), consumption (in the economic sense) then incorporates all sources of wealth, and not just market-based investments, into the investor's calculation of required return. Whereas the above extend the CAPM, the single-index model is a more simple model. It assumes, only, a correlation between security and market returns, without (numerous) other economic assumptions. It is useful in that it simplifies the estimation of correlation between securities, significantly reducing the inputs for building the correlation matrix required for portfolio optimization. The arbitrage pricing theory (APT) similarly differs as regards its assumptions. APT "gives up the notion that there is one right portfolio for everyone in the world, and ...replaces it with an explanatory model of what drives asset returns." It returns the required (expected) return of a financial asset as a linear function of various macro-economic factors, and assumes that arbitrage should bring incorrectly priced assets back into line. As regards portfolio optimization, the Black–Litterman model departs from the original Markowitz model – i.e. of constructing portfolios via an efficient frontier. Black–Litterman instead starts with an equilibrium assumption, and is then modified to take into account the 'views' (i.e., the specific opinions about asset returns) of the investor in question to arrive at a bespoke asset allocation. Where factors additional to volatility are considered (kurtosis, skew...) then multiple-criteria decision analysis can be applied; here deriving a Pareto efficient portfolio. The universal portfolio algorithm applies machine learning to asset selection, learning adaptively from historical data. Behavioral portfolio theory recognizes that investors have varied aims and create an investment portfolio that meets a broad range of goals. Copulas have Copula (probability theory)#Quantitative finance, lately been applied here; recently this is the case also List of genetic algorithm applications#Finance and Economics, for genetic algorithms and Machine learning#Applications, Machine learning, more generally. Tail risk parity, (Tail) risk parity focuses on allocation of risk, rather than allocation of capital. See for other techniques and objectives, and for discussion.


Derivative pricing

In pricing derivatives, the binomial options pricing model provides a discretized version of Black–Scholes, useful for the valuation of American styled options. Discretized models of this type are built – at least implicitly – using state-prices (#State prices, as above); relatedly, a large number of researchers have used options to extract state-prices for a variety of other applications in financial economics.Don M. Chance (2008)
"Option Prices and State Prices"
For Option style#Non-vanilla path-dependent "exotic" options, path dependent derivatives, Monte Carlo methods for option pricing are employed; here the modelling is in continuous time, but similarly uses risk neutral expected value. Various Option (finance)#Model implementation, other numeric techniques have also been developed. The theoretical framework too has been extended such that
martingale pricing Martingale pricing is a pricing approach based on the notions of martingale and risk neutrality. The martingale pricing approach is a cornerstone of modern quantitative finance and can be applied to a variety of derivatives contracts, e.g. options ...
is now the standard approach. Drawing on these techniques, models for various other underlyings and applications have also been developed, all based on the same logic (using "
contingent claim analysis In finance, a contingent claim is a derivative whose future payoff depends on the value of another “underlying” asset,Dale F. Gray, Robert C. Merton and Zvi Bodie. (2007). Contingent Claims Approach to Measuring and Managing Sovereign Credit Ri ...
"). Real options valuation allows that option holders can influence the option's underlying; models for Employee stock option#Valuation, employee stock option valuation explicitly assume non-rationality on the part of option holders; Credit derivatives allow that payment obligations or delivery requirements might not be honored. Exotic derivatives are now routinely valued. Multi-asset underlyers are handled via simulation or Copula (probability theory)#Quantitative finance, copula based analysis. Similarly, the various short-rate models allow for an extension of these techniques to Fixed income#Derivatives, fixed income- and interest rate derivatives. (The Vasicek model, Vasicek and Cox–Ingersoll–Ross model, CIR models are equilibrium-based, while Ho–Lee model, Ho–Lee and subsequent models are based on arbitrage-free pricing.) The more general Heath–Jarrow–Morton framework, HJM Framework describes the dynamics of the full forward rate, forward-rate curve – as opposed to working with short rates – and is then more widely applied. The valuation of the underlying instrument – additional to its derivatives – is relatedly extended, particularly for Hybrid security, hybrid securities, where credit risk is combined with uncertainty re future rates; see and . Following the Black Monday (1987), Crash of 1987, equity options traded in American markets began to exhibit what is known as a "volatility smile"; that is, for a given expiration, options whose strike price differs substantially from the underlying asset's price command higher prices, and thus implied volatility, implied volatilities, than what is suggested by BSM. (The pattern differs across various markets.) Modelling the volatility smile is an active area of research, and developments here – as well as implications re the standard theory – are discussed #Departures from normality, in the next section. After the financial crisis of 2007–2008, a further development:Didier Kouokap Youmbi (2017).
Derivatives Pricing after the 2007-2008 Crisis: How the Crisis Changed the Pricing Approach
. Bank of England – Prudential Regulation Authority (United Kingdom), Prudential Regulation Authority
(Over-the-counter (finance), over the counter) derivative pricing had relied on the BSM risk neutral pricing framework, under the assumptions of funding at the risk free rate and the ability to perfectly replicate cashflows so as to fully hedge. This, in turn, is built on the assumption of a credit-risk-free environment – called into question during the crisis. Addressing this, therefore, issues such as counterparty credit risk, funding costs and costs of capital are now additionally considered when pricing, and a credit valuation adjustment, or CVA – and potentially other ''valuation adjustments'', collectively xVA – is generally added to the risk-neutral derivative value. A related, and perhaps more fundamental change, is that discounting is now on the Overnight index swap, Overnight Index Swap (OIS) curve, as opposed to LIBOR as used previously. This is because post-crisis, the overnight rate is considered a better proxy for the "risk-free rate". (Also, practically, the interest paid on cash collateral (finance), collateral is usually the overnight rate; OIS discounting is then, sometimes, referred to as "Credit Support Annex, CSA discounting".) Swap (finance)#Valuation, Swap pricing – and, therefore, yield curve construction – is further modified: previously, swaps were valued off a single "self discounting" interest rate curve; whereas post crisis, to accommodate OIS discounting, valuation is now under a "multi-curve framework" where "forecast curves" are constructed for each floating-leg Libor#Maturities, LIBOR tenor, with discounting on the ''common'' OIS curve.


Corporate finance theory

Corporate finance theory has also been extended: mirroring the #Certainty, above developments, asset-valuation and decisioning no longer need assume "certainty". Monte Carlo methods in finance allow financial analysts to construct " stochastic" or probabilistic corporate finance models, as opposed to the traditional static and deterministic models; see . Relatedly, Real Options theory allows for owner – i.e. managerial – actions that impact underlying value: by incorporating option pricing logic, these actions are then applied to a distribution of future outcomes, changing with time, which then determine the "project's" valuation today. More traditionally, decision trees – which are complementary – have been used to evaluate projects, by incorporating in the valuation (all) Event (probability theory), possible events (or states) and consequent Decision making#Decision making in business and management, management decisions;Aswath Damodaran (2007)
"Probabilistic Approaches: Scenario Analysis, Decision Trees and Simulations"
In ''Strategic Risk Taking: A Framework for Risk Management''. Prentice Hall.
the correct discount rate here reflecting each decision-point's "non-diversifiable risk looking forward." Related to this, is the treatment of forecasted cashflows in
equity valuation In financial markets, stock valuation is the method of calculating theoretical values of companies and their stocks. The main use of these methods is to predict future market prices, or more generally, potential market prices, and thus to profit fr ...
. In many cases, following Williams #Certainty, above, the average (or most likely) cash-flows were discounted, as opposed to a more correct state-by-state treatment under uncertainty; see comments under Financial modeling#Accounting, Financial modeling § Accounting. In more modern treatments, then, it is the ''expected'' cashflows (in the Expected value, mathematical sense: ) combined into an overall value per forecast period which are discounted. "Capital Budgeting Applications and Pitfalls"
. Ch 13 in Ivo Welch (2017). ''Corporate Finance'': 4th Edition
And using the CAPM – or extensions – the discounting here is at the risk-free rate plus a premium linked to the uncertainty of the entity or project cash flows (essentially, Y and r combined). Other developments here include agency theory, which analyses the difficulties in motivating corporate management (the "agent") to act in the best interests of shareholders (the "principal"), rather than in their own interests; here emphasizing the issues interrelated with capital structure. Clean surplus accounting and the related residual income valuation provide a model that returns price as a function of earnings, expected returns, and change in book value, as opposed to dividends. This approach, to some extent, arises due to the implicit contradiction of seeing value as a function of dividends, while also holding that dividend policy cannot influence value per Modigliani and Miller's "Irrelevance principle"; see . "Corporate finance" as a discipline more generally, per Fisher #Certainty, above, relates to the long term objective of maximizing the Enterprise value, value of the firm - and its Total shareholder return, return to shareholders - and thus also incorporates the areas of capital structure and dividend policy. Extensions of the theory here then also consider these latter, as follows: (i) Corporate finance#Capitalization structure, optimization re capitalization structure, and theories here as to corporate choices and behavior: Capital structure substitution theory, Pecking order theory, Market timing hypothesis, Trade-off theory of capital structure, Trade-off theory; (ii) Corporate finance#Dividend policy, considerations and analysis re dividend policy, additional to - and sometimes contrasting with - Modigliani-Miller, include: the Dividend_policy#Walter's model , Walter model, John_Lintner#Lintner's_dividend_policy_model, Lintner model, and Dividend_policy#Residuals_theory_of_dividends, Residuals theory, as well as discussion re the observed clientele effect and dividend puzzle. As described, the typical application of real options is to capital budgeting type problems. However, here, they are also applied to problems of capital structure and dividend policy, and to the related design of corporate securities; Kenneth D. Garbade (2001). ''Pricing Corporate Securities as Contingent Claims.'' MIT Press. and since stockholder and bondholders have different objective functions, in the analysis of the related agency problems. In all of these cases, state-prices can provide the market-implied information relating to the corporate, #State prices, as above, which is then applied to the analysis. For example, convertible bonds can (must) be priced consistent with the (recovered) state-prices of the corporate's equity.See Kruschwitz and Löffler under Bibliography.


Financial markets

The discipline, as outlined, also includes a formal study of
financial market A financial market is a market in which people trade financial securities and derivatives at low transaction costs. Some of the securities include stocks and bonds, raw materials and precious metals, which are known in the financial market ...
s. Of interest especially are Market regulation and
market microstructure Market microstructure is a branch of finance concerned with the details of how exchange occurs in markets. While the theory of market microstructure applies to the exchange of real or financial assets, more evidence is available on the microstruct ...
, and their relationship to Financial market efficiency, price efficiency. Regulatory economics studies, in general, the economics of regulation. In the context of finance, it will address the impact of Financial regulation on the functioning of markets and the efficiency of prices, while also weighing the corresponding increases in market confidence and financial stability. Research here considers how, and to what extent, regulations relating to disclosure (earnings guidance, annual reports), insider trading, and Short_(finance)#Regulations, short-selling will impact price efficiency, the cost of equity, and market liquidity. Market microstructure is concerned with the details of how exchange occurs in markets (with Walrasian_auction, Walrasian-, Fisher market, Fisher-, and Arrow-Debreu markets as prototypes), and "analyzes how specific trading mechanisms affect the price formation process", examining the ways in which the processes of a market affect determinants of transaction costs, prices, quotes, volume, and trading behavior. It has been used, for example, in providing explanations for Real exchange-rate puzzles, long-standing exchange rate puzzles, and for the equity premium puzzle. In contrast to the above classical approach, models here explicitly allow for (testing the impact of) Frictionless market, market frictions and other Perfect market, imperfections. For both regulation and microstructure, and generally, Agent-based_model#In_economics_and_social_sciences, agent-based models can be developed to Agent-based_computational_economics#Example:_finance, examine any impact due to a change in structure or policy, by testing these in an artificial financial market, or AFM. This approach, essentially simulated trade between numerous Agent (economics), agents, "typically uses artificial intelligence technologies [often genetic algorithms and Artificial neural network, neural nets] to represent the adaptive market hypothesis, adaptive behaviour of market participants".Katalin Boer, Arie De Bruin, Uzay Kaymak (2005)
"On the Design of Artificial Stock Markets"
''Research In Management'' Erasmus Research Institute of Management, ERIM Report Series
These Microfoundations, 'bottom-up' models "start from first principals of agent behavior",LeBaron, B. (2002)
"Building the Santa Fe artificial stock market"
''Physica (journal), Physica A'', 1, 20.
with participants modifying their trading strategies having learned over time, and "are able to describe macro features [i.e. stylized facts] Emergence#Economics, emerging from a soup of individual interacting strategies". Agent-based models depart further from the classical approach — the
representative agent Economists use the term representative agent to refer to the typical decision-maker of a certain type (for example, the typical consumer, or the typical firm). More technically, an economic model is said to have a representative agent if all agen ...
, as outlined — in that they introduce Heterogeneity in economics, heterogeneity into the environment (thereby addressing, also, the aggregation problem).


Challenges and criticism

As above, there is a very close link between (i) the random walk hypothesis, with the associated belief that price changes should follow a
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
, on the one hand, and (ii) market efficiency and
rational expectations In economics, "rational expectations" are model-consistent expectations, in that agents inside the model are assumed to "know the model" and on average take the model's predictions as valid. Rational expectations ensure internal consistency i ...
, on the other. Wide departures from these are commonly observed, and there are thus, respectively, two main sets of challenges.


Departures from normality

As discussed, the assumptions that market prices follow a random walk and that asset returns are normally distributed are fundamental. Empirical evidence, however, suggests that these assumptions may not hold, and that in practice, traders, analysts Financial_risk_management#Banking, and risk managers frequently modify the "standard models" (see Kurtosis risk, Skewness risk, Long tail, Model risk). In fact, Benoit Mandelbrot had discovered already in the 1960s that changes in financial prices do not follow a
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
, the basis for much option pricing theory, although this observation was slow to find its way into mainstream financial economics. Financial models with long-tailed distributions and volatility clustering have been introduced to overcome problems with the realism of the above "classical" financial models; while Jump diffusion#In economics and finance, jump diffusion models allow for (option) pricing incorporating jump process, "jumps" in the spot price. Risk managers, similarly, complement (or substitute) the standard value at risk models with Historical simulation (finance), historical simulations, Mixture model#A financial model, mixture models, principal component analysis, extreme value theory, as well as models for volatility clustering. For further discussion see , and . Portfolio managers, likewise, have modified their optimization criteria and algorithms; see #Portfolio theory above. Closely related is the volatility smile, where, as above, implied volatility – the volatility corresponding to the BSM price – is observed to ''differ'' as a function of strike price (i.e. moneyness), true only if the price-change distribution is non-normal, unlike that assumed by BSM. The term structure of volatility describes how (implied) volatility differs for related options with different maturities. An implied volatility surface is then a three-dimensional surface plot of volatility smile and term structure. These empirical phenomena negate the assumption of constant volatility – and log-normality – upon which Black–Scholes is built. Within institutions, the function of Black-Scholes is now, largely, to ''communicate'' prices via implied volatilities, much like bond prices are communicated via yield to maturity, YTM; see . In consequence traders (Financial_risk_management#Banking, and risk managers) now, instead, use "smile-consistent" models, firstly, when valuing derivatives not directly mapped to the surface, facilitating the pricing of other, i.e. non-quoted, strike/maturity combinations, or of non-European derivatives, and generally for hedging purposes. The two main approaches are local volatility and stochastic volatility. The first returns the volatility which is "local" to each spot-time point of the Finite difference methods for option pricing, finite difference- or Monte Carlo methods for option pricing, simulation-based valuation; i.e. as opposed to implied volatility, which holds overall. In this way calculated prices – and numeric structures – are market-consistent in an arbitrage-free sense. The second approach assumes that the volatility of the underlying price is a stochastic process rather than a constant. Models here are first Stochastic volatility#Calibration and estimation, calibrated to observed prices, and are then applied to the valuation or hedging in question; the most common are Heston model, Heston, SABR volatility model, SABR and Constant elasticity of variance model, CEV. This approach addresses certain problems identified with hedging under local volatility. Related to local volatility are the Lattice model (finance), lattice-based Implied binomial tree, implied-binomial and Implied trinomial tree, -trinomial trees – essentially a discretization of the approach – which are similarly, but less commonly, used for pricing; these are built on state-prices recovered from the surface. Edgeworth binomial trees allow for a specified (i.e. non-Gaussian) Skewness, skew and kurtosis in the spot price; priced here, options with differing strikes will return differing implied volatilities, and the tree can be calibrated to the smile as required. Similarly purposed (and derived) Closed-form expression, closed-form models were also developed. As discussed, additional to assuming log-normality in returns, "classical" BSM-type models also (implicitly) assume the existence of a credit-risk-free environment, where one can perfectly replicate cashflows so as to fully hedge, and then discount at "the" risk-free-rate. And therefore, post crisis, the various x-value adjustments must be employed, effectively correcting the risk-neutral value for counterparty credit risk, counterparty- and XVA#Valuation adjustments, funding-related risk. These xVA are ''additional'' to any smile or surface effect. This is valid as the surface is built on price data relating to fully collateralized positions, and there is therefore no "double counting (accounting), double counting" of credit risk (etc.) when appending xVA. (Were this not the case, then each counterparty would have its own surface...) As mentioned at top, mathematical finance (and particularly financial engineering) is more concerned with mathematical consistency (and market realities) than compatibility with economic theory, and the above "extreme event" approaches, smile-consistent modeling, and valuation adjustments should then be seen in this light. Recognizing this, James Rickards, amongst other critics of financial economics, suggests that, instead, the theory needs revisiting almost entirely: :"The current system, based on the idea that risk is distributed in the shape of a bell curve, is flawed... The problem is [that economists and practitioners] never abandon the bell curve. They are like medieval astronomers who believe the sun revolves around the earth and are Geocentric model#Ptolemaic system, furiously tweaking their geo-centric math in the face of contrary evidence. They will never get this right; Copernican Revolution, they need their Copernicus."


Departures from rationality

As seen, a common assumption is that financial decision makers act rationally; see Homo economicus. Recently, however, researchers in experimental economics and experimental finance have challenged this assumption Empirical evidence, empirically. These assumptions are also challenged Theory, theoretically, by behavioral finance, a discipline primarily concerned with the limits to rationality of economic agents. For related criticisms re corporate finance theory vs its practice see: . Consistent with, and complementary to these findings, various persistent Market anomaly, market anomalies have been documented, these being price or return distortions – e.g. size premiums – which appear to contradict the
efficient-market hypothesis The efficient-market hypothesis (EMH) is a hypothesis in financial economics that states that asset prices reflect all available information. A direct implication is that it is impossible to "beat the market" consistently on a risk-adjusted bas ...
; calendar effects are the best known group here. Related to these are various of the economic puzzles, concerning phenomena similarly contradicting the theory. The ''equity premium puzzle'', as one example, arises in that the difference between the observed returns on stocks as compared to government bonds is consistently higher than the
risk premium A risk premium is a measure of excess return that is required by an individual to compensate being subjected to an increased level of risk. It is used widely in finance and economics, the general definition being the expected risky return less t ...
rational equity investors should demand, an "abnormal return". For further context see Random walk hypothesis#A non-random walk hypothesis, Random walk hypothesis § A non-random walk hypothesis, and sidebar for specific instances. More generally, and particularly following the financial crisis of 2007–2008, financial economics and mathematical finance have been subjected to deeper criticism; notable here is Nassim Nicholas Taleb, who claims that the prices of financial assets cannot be characterized by the simple models currently in use, rendering much of current practice at best irrelevant, and, at worst, dangerously misleading; see Black swan theory, Taleb distribution. A topic of general interest has thus been financial crises, and the failure of (financial) economics to model (and predict) these. A related problem is systemic risk: where companies hold securities in each other then this interconnectedness may entail a "valuation chain" – and the performance of one company, or security, here will impact all, a phenomenon not easily modeled, regardless of whether the individual models are correct. See: Systemic risk#Inadequacy of classic valuation models, Systemic risk § Inadequacy of classic valuation models; Cascades in financial networks; Flight-to-quality. Areas of research attempting to explain (or at least model) these phenomena, and crises, include Noise trader, noise trading,
market microstructure Market microstructure is a branch of finance concerned with the details of how exchange occurs in markets. While the theory of market microstructure applies to the exchange of real or financial assets, more evidence is available on the microstruct ...
(as above), and Heterogeneous agent models. The latter is extended to agent-based computational economics, agent-based computational models, as mentioned; here For a survey see: LeBaron, Blake (2006)
"Agent-based Computational Finance"''Handbook of Computational Economics''
Elsevier
price is treated as an emergent phenomenon, resulting from the interaction of the various market participants (agents). The noisy market hypothesis argues that prices can be influenced by speculators and momentum traders, as well as by insider trading, insiders and institutions that often buy and sell stocks for reasons unrelated to fundamental value; see Noise (economic). The adaptive market hypothesis is an attempt to reconcile the efficient market hypothesis with behavioral economics, by applying the principles of evolution to financial interactions. An information cascade, alternatively, shows market participants engaging in the same acts as others ("herd behavior"), despite contradictions with their private information. Copula (probability theory)#Quantitative finance, Copula-based modelling has similarly been applied. See also Hyman Minsky's Hyman Minsky#Minsky's financial instability-hypothesis, "financial instability hypothesis", as well as George Soros#Reflexivity, financial markets, and economic theory, George Soros' application of Reflexivity_(social_theory)#In_economics, "reflexivity". On the obverse, however, various studies have shown that despite these departures from efficiency, asset prices do typically exhibit a random walk and that one cannot therefore consistently outperform market averages, i.e. attain Alpha (investment), "alpha".
William F. Sharpe William Forsyth Sharpe (born June 16, 1934) is an American economist. He is the STANCO 25 Professor of Finance, Emeritus at Stanford University's Graduate School of Business, and the winner of the 1990 Nobel Memorial Prize in Economic Sciences. ...
(1991)
"The Arithmetic of Active Management"
. ''Financial Analysts Journal'' Vol. 47, No. 1, January/February
The practical implication, therefore, is that passive investing (e.g. via low-cost index funds) should, on average, serve better than any other active investing, active strategy.
William F. Sharpe William Forsyth Sharpe (born June 16, 1934) is an American economist. He is the STANCO 25 Professor of Finance, Emeritus at Stanford University's Graduate School of Business, and the winner of the 1990 Nobel Memorial Prize in Economic Sciences. ...
(2002)
''Indexed Investing: A Prosaic Way to Beat the Average Investor''
. Presention: Monterey Institute of International Studies. Retrieved May 20, 2010.
Relatedly, institutionally inherent ''limits to arbitrage'' – as opposed to factors directly contradictory to the theory – are sometimes proposed as an explanation for these departures from efficiency.


See also

* :Finance theories * :Financial models * Deutsche Bank Prize in Financial Economics * * Fischer Black Prize * List of financial economics articles * List of financial economists * * Master of Financial Economics * Monetary economics * Outline of economics * Outline of corporate finance * Outline of finance


Historical notes


References


Bibliography

Financial economics * * * * * * * * * * * * * * * * * * * * * * * * * * * * * Volume I ; Volume II . * Asset pricing * * * * * * * * * * * * * * Corporate finance * * * * * * * * * * * * *


External links

{{Financial risk Financial economics, Actuarial science