Discrete Choice
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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 ...
, discrete choice models, or qualitative choice models, describe, explain, and predict choices between two or more
discrete Discrete may refer to: *Discrete particle or quantum in physics, for example in quantum theory *Discrete device, an electronic component with just one circuit element, either passive or active, other than an integrated circuit *Discrete group, a g ...
alternatives, such as entering or not entering the labor market, or choosing between modes of
transport Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
. Such choices contrast with standard consumption models in which the quantity of each good consumed is assumed to be a continuous variable. In the continuous case, calculus methods (e.g. first-order conditions) can be used to determine the optimum amount chosen, and demand can be modeled empirically using
regression analysis In statistical modeling, regression analysis is a set of statistical processes for estimating the relationships between a dependent variable (often called the 'outcome' or 'response' variable, or a 'label' in machine learning parlance) and one ...
. On the other hand, discrete choice analysis examines situations in which the potential outcomes are discrete, such that the optimum is not characterized by standard first-order conditions. Thus, instead of examining "how much" as in problems with continuous choice variables, discrete choice analysis examines "which one". However, discrete choice analysis can also be used to examine the chosen quantity when only a few distinct quantities must be chosen from, such as the number of vehicles a household chooses to own Chapter 8
and the number of minutes of telecommunications service a customer decides to purchase. Techniques such as
logistic regression In statistics, the logistic model (or logit model) is a statistical model that models the probability of an event taking place by having the log-odds for the event be a linear combination of one or more independent variables. In regression a ...
and
probit regression In statistics, a probit model is a type of regression where the dependent variable can take only two values, for example married or not married. The word is a portmanteau, coming from ''probability'' + ''unit''. The purpose of the model is to e ...
can be used for empirical analysis of discrete choice. Discrete choice models theoretically or empirically model choices made by people among a finite set of alternatives. The models have been used to examine, e.g., the choice of which car to buy, where to go to college, which mode of
transport Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
(car, bus, rail) to take to work among numerous other applications. Discrete choice models are also used to examine choices by organizations, such as firms or government agencies. In the discussion below, the decision-making unit is assumed to be a person, though the concepts are applicable more generally.
Daniel McFadden Daniel Little McFadden (born July 29, 1937) is an American econometrician who shared the 2000 Nobel Memorial Prize in Economic Sciences with James Heckman. McFadden's share of the prize was "for his development of theory and methods for analyzi ...
won the
Nobel prize The Nobel Prizes ( ; sv, Nobelpriset ; no, Nobelprisen ) are five separate prizes that, according to Alfred Nobel's will of 1895, are awarded to "those who, during the preceding year, have conferred the greatest benefit to humankind." Alfr ...
in 2000 for his pioneering work in developing the theoretical basis for discrete choice. Discrete choice models statistically relate the choice made by each person to the attributes of the person and the attributes of the alternatives available to the person. For example, the choice of which car a person buys is statistically related to the person's income and age as well as to price, fuel efficiency, size, and other attributes of each available car. The models estimate the probability that a person chooses a particular alternative. The models are often used to forecast how people's choices will change under changes in demographics and/or attributes of the alternatives. Discrete choice models specify the probability that an individual chooses an option among a set of alternatives. The probabilistic description of discrete choice behavior is used not to reflect individual behavior that is viewed as intrinsically probabilistic. Rather, it is the lack of information that leads us to describe choice in a probabilistic fashion. In practice, we cannot know all factors affecting individual choice decisions as their determinants are partially observed or imperfectly measured. Therefore, discrete choice models rely on stochastic assumptions and specifications to account for unobserved factors related to a) choice alternatives, b) taste variation over people (interpersonal heterogeneity) and over time (intra-individual choice dynamics), and c) heterogeneous choice sets. The different formulations have been summarized and classified into groups of models.


Applications

* Marketing researchers use discrete choice models to study
consumer demand In economics, demand is the quantity of a good that consumers are willing and able to purchase at various prices during a given time. The relationship between price and quantity demand is also called the demand curve. Demand for a specific item ...
and to predict competitive business responses, enabling choice modelers to solve a range of business problems, such as pricing,
product development In business and engineering, new product development (NPD) covers the complete process of bringing a new product to market, renewing an existing product or introducing a product in a new market. A central aspect of NPD is product design, along w ...
, and demand estimation problems. In market research, this is commonly called
conjoint analysis Conjoint analysis is a survey-based statistical technique used in market research that helps determine how people value different attributes (feature, function, benefits) that make up an individual product or service. The objective of conjoint an ...
. * Transportation planners use discrete choice models to predict demand for planned
transport Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
ation systems, such as which route a driver will take and whether someone will take
rapid transit Rapid transit or mass rapid transit (MRT), also known as heavy rail or metro, is a type of high-capacity public transport generally found in urban areas. A rapid transit system that primarily or traditionally runs below the surface may be ...
systems. The first applications of discrete choice models were in transportation planning, and much of the most advanced research in discrete choice models is conducted by transportation researchers. * Energy forecasters and policymakers use discrete choice models for households' and firms' choice of heating system, appliance efficiency levels, and fuel efficiency level of vehicles. * Environmental studies utilize discrete choice models to examine the recreators' choice of, e.g., fishing or skiing site and to infer the value of amenities, such as campgrounds, fish stock, and warming huts, and to estimate the value of water quality improvements. * Labor economists use discrete choice models to examine participation in the work force, occupation choice, and choice of college and training programs. * Ecological studies employ discrete choice models to investigate parameters that drive habitat selection in animals.


Common features of discrete choice models

Discrete choice models take many forms, including: Binary Logit, Binary Probit, Multinomial Logit, Conditional Logit, Multinomial Probit, Nested Logit, Generalized Extreme Value Models, Mixed Logit, and Exploded Logit. All of these models have the features described below in common.


Choice set

The choice set is the set of alternatives that are available to the person. For a discrete choice model, the choice set must meet three requirements: # The set of alternatives must be
collectively exhaustive In probability theory and logic, a set of events is jointly or collectively exhaustive if at least one of the events must occur. For example, when rolling a six-sided die, the events 1, 2, 3, 4, 5, and 6 balls of a single outcome are collect ...
, meaning that the set includes all possible alternatives. This requirement implies that the person necessarily does choose an alternative from the set. # The alternatives must be
mutually exclusive In logic and probability theory, two events (or propositions) are mutually exclusive or disjoint if they cannot both occur at the same time. A clear example is the set of outcomes of a single coin toss, which can result in either heads or tails ...
, meaning that choosing one alternative means not choosing any other alternatives. This requirement implies that the person chooses only one alternative from the set. # The set must contain a ''finite'' number of alternatives. This third requirement distinguishes discrete choice analysis from forms of regression analysis in which the dependent variable can (theoretically) take an infinite number of values. As an example, the choice set for a person deciding which mode of
transport Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
to take to work includes driving alone, carpooling, taking bus, etc. The choice set is complicated by the fact that a person can use multiple modes for a given trip, such as driving a car to a train station and then taking train to work. In this case, the choice set can include each possible combination of modes. Alternatively, the choice can be defined as the choice of "primary" mode, with the set consisting of car, bus, rail, and other (e.g. walking, bicycles, etc.). Note that the alternative "other" is included in order to make the choice set exhaustive. Different people may have different choice sets, depending on their circumstances. For instance, the
Scion Scion may refer to: Arts, entertainment, and media Fictional entities *Scion, a playable class in the game '' Path of Exile'' (2013) *Atlantean Scion, a device in the ''Tomb Raider'' video game series *Scions, an alien race in the video game ''B ...
automobile was not sold in Canada as of 2009, so new car buyers in Canada faced different choice sets from those of American consumers. Such considerations are taken into account in the formulation of discrete choice models.


Defining choice probabilities

A discrete choice model specifies the probability that a person chooses a particular alternative, with the probability expressed as a function of observed variables that relate to the alternatives and the person. In its general form, the probability that person ''n'' chooses alternative ''i'' is expressed as: : P_ \equiv \Pr( \text n \text i) = G(x_, \;x_, \; s_n, \;\beta), where : x_ is a vector of attributes of alternative ''i'' faced by person ''n'', : x_ is a vector of attributes of the other alternatives (other than ''i'') faced by person ''n'', : s_n is a vector of characteristics of person ''n'', and : \beta is a set of parameters giving the effects of variables on probabilities, which are estimated statistically. In the mode of
transport Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
example above, the attributes of modes (''xni''), such as travel time and cost, and the characteristics of consumer (''sn''), such as annual income, age, and gender, can be used to calculate choice probabilities. The attributes of the alternatives can differ over people; e.g., cost and time for travel to work by car, bus, and rail are different for each person depending on the location of home and work of that person. Properties: * ''Pni'' is between 0 and 1 * \forall n:\; \sum_^J P_ = 1, where ''J'' is the total number of alternatives. * (Expected fraction of people choosing ''i'' ) = , where N is the number of people making the choice. Different models (i.e., models using a different function G) have different properties. Prominent models are introduced below.


Consumer utility

Discrete choice models can be derived from
utility theory 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 philosopher ...
. This derivation is useful for three reasons: # It gives a precise meaning to the probabilities ''Pni'' # It motivates and distinguishes alternative model specifications, e.g., the choice of a functional form for ''G''. # It provides the theoretical basis for calculation of changes in consumer surplus (compensating variation) from changes in the attributes of the alternatives. ''Uni'' is the utility (or net benefit or well-being) that person ''n'' obtains from choosing alternative ''i''. The behavior of the person is utility-maximizing: person n chooses the alternative that provides the highest utility. The choice of the person is designated by dummy variables, ''yni'', for each alternative: : y_ = \begin 1 & U_ > U_ \quad \forall j \neq i\\ 0 & \text\end Consider now the researcher who is examining the choice. The person's choice depends on many factors, some of which the researcher observes and some of which the researcher does not. The utility that the person obtains from choosing an alternative is decomposed into a part that depends on variables that the researcher observes and a part that depends on variables that the researcher does not observe. In a linear form, this decomposition is expressed as : U_= \beta z_ + \varepsilon_ where *z_ is a vector of observed variables relating to alternative ''i'' for person ''n'' that depends on attributes of the alternative, ''xni'', interacted perhaps with attributes of the person, ''sn'', such that it can be expressed as z_=z(x_, s_n) for some numerical function ''z'', *\beta is a corresponding vector of coefficients of the observed variables, and * \varepsilon_ captures the impact of all unobserved factors that affect the person's choice. The choice probability is then :\begin P_& = \Pr(y_ = 1) \\ &= \Pr \left ( \bigcap_U_ > U_, \right ) \\ & = \Pr \left ( \bigcap_ \beta z_ + \varepsilon_ > \beta z_ + \varepsilon_, \right ) \\ & = \Pr \left ( \bigcap_ \varepsilon_- \varepsilon_ < \beta z_- \beta z_, \right ) \end Given ''β'', the choice probability is the probability that the random terms, (which are random from the researcher's perspective, since the researcher does not observe them) are below the respective quantities \forall j \neq i: \beta z_ - \beta z_. Different choice models (i.e. different specifications of G) arise from different distributions of ''εni'' for all ''i'' and different treatments of ''β''.


Properties of discrete choice models implied by utility theory


Only differences matter

The probability that a person chooses a particular alternative is determined by comparing the utility of choosing that alternative to the utility of choosing other alternatives: : P_= \Pr(y_ = 1) = \Pr \left ( \bigcap_ U_ > U_ \right ) = \Pr \left ( \bigcap_ U_ - U_ > 0 \right ) As the last term indicates, the choice probability depends only on the difference in utilities between alternatives, not on the absolute level of utilities. Equivalently, adding a constant to the utilities of all the alternatives does not change the choice probabilities.


Scale must be normalized

Since utility has no units, it is necessary to normalize the scale of utilities. The scale of utility is often defined by the variance of the error term in discrete choice models. This variance may differ depending on the characteristics of the dataset, such as when or where the data are collected. Normalization of the variance therefore affects the interpretation of parameters estimated across diverse datasets.


Prominent types of discrete choice models

Discrete choice models can first be classified according to the number of available alternatives. : * Binomial choice models (dichotomous): 2 available alternatives : * Multinomial choice models (
polytomous An internal node of a phylogenetic tree is described as a polytomy or multifurcation if (i) it is in a rooted tree and is linked to three or more child subtrees or (ii) it is in an unrooted tree and is attached to four or more branches. A tr ...
): 3 or more available alternatives Multinomial choice models can further be classified according to the model specification: : * Models, such as standard logit, that assume no correlation in unobserved factors over alternatives : * Models that allow correlation in unobserved factors among alternatives In addition, specific forms of the models are available for examining rankings of alternatives (i.e., first choice, second choice, third choice, etc.) and for ratings data. Details for each model are provided in the following sections.


Binary choice


A. Logit with attributes of the person but no attributes of the alternatives

''Un'' is the utility (or net benefit) that person n obtains from taking an action (as opposed to not taking the action). The utility the person obtains from taking the action depends on the characteristics of the person, some of which are observed by the researcher and some are not. The person takes the action, , if ''Un'' > 0. The unobserved term, ''εn'', is assumed to have a
logistic distribution Logistic may refer to: Mathematics * Logistic function, a sigmoid function used in many fields ** Logistic map, a recurrence relation that sometimes exhibits chaos ** Logistic regression, a statistical model using the logistic function ** Logit, ...
. The specification is written succinctly as: :\begin U_n = \beta s_n + \varepsilon_n \\ y_n = \begin 1 & U_n > 0 \\ 0 & U_n \leqslant 0 \end \\ \varepsilon \sim \text \end \quad \Rightarrow \quad P_ = \frac


B. Probit with attributes of the person but no attributes of the alternatives

The description of the model is the same as model A, except the unobserved terms are distributed standard normal instead of logistic. :\begin U_n = \beta s_n + \varepsilon_n \\ y_n = \begin 1 & U_n > 0 \\ 0 & U_n \leqslant 0 \end \\ \varepsilon \sim \text \end \quad \Rightarrow \quad P_ = \Phi(\beta s_n), where \Phi is cumulative distribution function of standard normal.


C. Logit with variables that vary over alternatives

''Uni'' is the utility person ''n'' obtains from choosing alternative ''i''. The utility of each alternative depends on the attributes of the alternatives interacted perhaps with the attributes of the person. The unobserved terms are assumed to have an
extreme value In mathematical analysis, the maxima and minima (the respective plurals of maximum and minimum) of a function, known collectively as extrema (the plural of extremum), are the largest and smallest value of the function, either within a given ran ...
distribution.The density and cumulative distribution function of the extreme value distribution are given by f(\varepsilon_) = \exp (-\varepsilon_) \exp (-\exp (-\varepsilon_)) and F(\varepsilon_) = \exp (-\exp (-\varepsilon_)). This distribution is also called the Gumbel or type I extreme value distribution, a special type of
generalized extreme value distribution In probability theory and statistics, the generalized extreme value (GEV) distribution is a family of continuous probability distributions developed within extreme value theory to combine the Gumbel, Fréchet and Weibull families also known a ...
.
: \begin U_ = \beta z_ + \varepsilon_ \\ U_ = \beta z_ + \varepsilon_ \\ \varepsilon_, \varepsilon_ \sim \text \end \quad \Rightarrow \quad P_= \frac We can relate this specification to model A above, which is also binary logit. In particular, ''P''''n''1 can also be expressed as :P_ =\frac Note that if two error terms are
iid In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is us ...
extreme value In mathematical analysis, the maxima and minima (the respective plurals of maximum and minimum) of a function, known collectively as extrema (the plural of extremum), are the largest and smallest value of the function, either within a given ran ...
, their difference is distributed logistic, which is the basis for the equivalence of the two specifications.


D. Probit with variables that vary over alternatives

The description of the model is the same as model C, except the difference of the two unobserved terms are distributed standard normal instead of logistic. Then the probability of taking the action is :P_ = \Phi(\beta (z_-z_)), where Φ is the cumulative distribution function of standard normal.


Multinomial choice without correlation among alternatives


E. Logit with attributes of the person but no attributes of the alternatives

The utility for all alternatives depends on the same variables, ''sn'', but the coefficients are different for different alternatives: * *Since only differences in utility matter, it is necessary to normalize \beta_i =0 for one alternative. Assuming \beta_1=0 , * are
iid In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is us ...
extreme value In mathematical analysis, the maxima and minima (the respective plurals of maximum and minimum) of a function, known collectively as extrema (the plural of extremum), are the largest and smallest value of the function, either within a given ran ...
The choice probability takes the form : P_= , where J is the total number of alternatives.


F. Logit with variables that vary over alternatives (also called conditional logit)

The utility for each alternative depends on attributes of that alternative, interacted perhaps with attributes of the person: :\begin U_ = \beta z_ + \varepsilon_ \\ \varepsilon_ \sim \text \end \quad \Rightarrow \quad P_ = , where ''J'' is the total number of alternatives. Note that model E can be expressed in the same form as model F by appropriate respecification of variables. Define w_^k=s_n \delta_ where \delta_ is the
Kronecker delta In mathematics, the Kronecker delta (named after Leopold Kronecker) is a function of two variables, usually just non-negative integers. The function is 1 if the variables are equal, and 0 otherwise: \delta_ = \begin 0 &\text i \neq j, \\ 1 & ...
and ''sn'' are from model E. Then, model F is obtained by using :z_ = \left \ \quad \text \quad \beta = \left \, where ''J'' is the total number of alternatives.


Multinomial choice with correlation among alternatives

A standard logit model is not always suitable, since it assumes that there is no correlation in unobserved factors over alternatives. This lack of correlation translates into a particular pattern of substitution among alternatives that might not always be realistic in a given situation. This pattern of substitution is often called the Independence of Irrelevant Alternatives (IIA) property of standard logit models. See the Red Bus/Blue Bus example in which this pattern does not hold, or the path choice example. A number of models have been proposed to allow correlation over alternatives and more general substitution patterns: * Nested Logit Model - Captures correlations between alternatives by partitioning the choice set into 'nests' ** Cross-nested Logit model (CNL) - Alternatives may belong to more than one nest ** C-logit Model - Captures correlations between alternatives using 'commonality factor' ** Paired Combinatorial Logit Model - Suitable for route choice problems. * Generalized Extreme Value Model - General class of model, derived from the random utility model to which multinomial logit and nested logit belong * Conditional probit - Allows full covariance among alternatives using a joint normal distribution. * Mixed logit- Allows any form of correlation and substitution patterns. When a mixed logit is with jointly normal random terms, the models is sometimes called "multinomial probit model with logit kernel". Can be applied to route choice. The following sections describe Nested Logit, GEV, Probit, and Mixed Logit models in detail.


G. Nested Logit and Generalized Extreme Value (GEV) models

The model is the same as model F except that the unobserved component of utility is correlated over alternatives rather than being independent over alternatives. * * The marginal distribution of each ''εni'' is
extreme value In mathematical analysis, the maxima and minima (the respective plurals of maximum and minimum) of a function, known collectively as extrema (the plural of extremum), are the largest and smallest value of the function, either within a given ran ...
, but their joint distribution allows correlation among them. *The probability takes many forms depending on the pattern of correlation that is specified. See Generalized Extreme Value.


H. Multinomial probit

The model is the same as model G except that the unobserved terms are distributed jointly
normal Normal(s) or The Normal(s) may refer to: Film and television * ''Normal'' (2003 film), starring Jessica Lange and Tom Wilkinson * ''Normal'' (2007 film), starring Carrie-Anne Moss, Kevin Zegers, Callum Keith Rennie, and Andrew Airlie * ''Norma ...
, which allows any pattern of correlation and heteroscedasticity: :\begin U_ = \beta z_ +\varepsilon_ \\ \varepsilon_n \equiv (\varepsilon_,\cdots,\varepsilon_) \sim N(0,\Omega) \end \quad \Rightarrow \quad P_ = \Pr \left ( \bigcap_\beta z_+\varepsilon_ > \beta z_ + \varepsilon_ \right ) = \int I\left ( \bigcap_\beta z_+\varepsilon_ > \beta z_ + \varepsilon_ \right ) \phi(\varepsilon_n , \Omega) \;d \varepsilon_n, where \phi(\varepsilon_n , \Omega) is the joint normal density with mean zero and covariance \Omega . The integral for this choice probability does not have a closed form, and so the probability is approximated by quadrature o
simulation
When \Omega is the identity matrix (such that there is no correlation or heteroscedasticity), the model is called independent probit.


I. Mixed logit

Mixed Logit models have become increasingly popular in recent years for several reasons. First, the model allows \beta to be random in addition to \varepsilon. The randomness in \beta accommodates random taste variation over people and correlation across alternatives that generates flexible substitution patterns. Second, advances in simulation have made approximation of the model fairly easy. In addition, McFadden and
Train In rail transport, a train (from Old French , from Latin , "to pull, to draw") is a series of connected vehicles that run along a railway track and transport people or freight. Trains are typically pulled or pushed by locomotives (often ...
have shown that any true choice model can be approximated, to any degree of accuracy by a mixed logit with appropriate specification of explanatory variables and distribution of coefficients. * *\beta \sim f(\beta , \theta) for any distribution \it f , where \theta is the set of distribution parameters (e.g. mean and variance) to be estimated, *
iid In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is us ...
extreme value In mathematical analysis, the maxima and minima (the respective plurals of maximum and minimum) of a function, known collectively as extrema (the plural of extremum), are the largest and smallest value of the function, either within a given ran ...
, The choice probability is :P_= \int_\beta L_ (\beta) f(\beta , \theta) \, d\beta, where : L_ (\beta) = is logit probability evaluated at \beta, with J the total number of alternatives. The integral for this choice probability does not have a closed form, so the probability is approximated by simulation.


Estimation from choices

Discrete choice models are often estimated using
maximum likelihood estimation In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed stati ...
. Logit models can be estimated by
logistic regression In statistics, the logistic model (or logit model) is a statistical model that models the probability of an event taking place by having the log-odds for the event be a linear combination of one or more independent variables. In regression a ...
, and probit models can be estimated by
probit regression In statistics, a probit model is a type of regression where the dependent variable can take only two values, for example married or not married. The word is a portmanteau, coming from ''probability'' + ''unit''. The purpose of the model is to e ...
.
Nonparametric Nonparametric statistics is the branch of statistics that is not based solely on Statistical parameter, parametrized families of probability distributions (common examples of parameters are the mean and variance). Nonparametric statistics is based ...
methods, such as the maximum score estimator, have been proposed. Estimation of such models is usually done via parametric, semi-parametric and non-parametric maximum likelihood methods, but can also be done with the
Partial least squares path modeling The partial least squares path modeling or partial least squares structural equation modeling (PLS-PM, PLS-SEM) is a method for structural equation modeling that allows estimation of complex cause-effect relationships in path models with latent vari ...
approach.


Estimation from rankings

In many situations, a person's ranking of alternatives is observed, rather than just their chosen alternative. For example, a person who has bought a new car might be asked what he/she would have bought if that car was not offered, which provides information on the person's second choice in addition to their first choice. Or, in a survey, a respondent might be asked: ::Example: Rank the following cell phone calling plans from your most preferred to your least preferred. :: * $60 per month for unlimited anytime minutes, two-year contract with $100 early termination fee :: * $30 per month for 400 anytime minutes, 3 cents per minute after 400 minutes, one-year contract with $125 early termination fee :: * $35 per month for 500 anytime minutes, 3 cents per minute after 500 minutes, no contract or early termination fee :: * $50 per month for 1000 anytime minutes, 5 cents per minute after 1000 minutes, two-year contract with $75 early termination fee The models described above can be adapted to account for rankings beyond the first choice. The most prominent model for rankings data is the exploded logit and its mixed version.


J. Exploded logit

Under the same assumptions as for a standard logit ( model F), the probability for a ranking of the alternatives is a product of standard logits. The model is called "exploded logit" because the choice situation that is usually represented as one logit formula for the chosen alternative is expanded ("exploded") to have a separate logit formula for each ranked alternative. The exploded logit model is the product of standard logit models with the choice set decreasing as each alternative is ranked and leaves the set of available choices in the subsequent choice. Without loss of generality, the alternatives can be relabeled to represent the person's ranking, such that alternative 1 is the first choice, 2 the second choice, etc. The choice probability of ranking J alternatives as 1, 2, ..., J is then :\Pr(\text 1, 2, \ldots , J) = \ldots As with standard logit, the exploded logit model assumes no correlation in unobserved factors over alternatives. The exploded logit can be generalized, in the same way as the standard logit is generalized, to accommodate correlations among alternatives and random taste variation. The "mixed exploded logit" model is obtained by probability of the ranking, given above, for ''Lni'' in the mixed logit model ( model I). This model is also known in econometrics as the ''rank ordered logit model'' and it was introduced in that field by Beggs, Cardell and Hausman in 1981. One application is the Combes et al. paper explaining the ranking of candidates to become professor. It is also known as Plackett–Luce model in biomedical literature.


Ordered models

In surveys, respondents are often asked to give ratings, such as: ::Example: Please give your rating of how well the President is doing. :: 1: Very badly :: 2: Badly :: 3: Okay :: 4: Well :: 5: Very well Or, ::Example: On a 1-5 scale where 1 means disagree completely and 5 means agree completely, how much do you agree with the following statement. "The Federal government should do more to help people facing foreclosure on their homes." A multinomial discrete-choice model can examine the responses to these questions ( model G, model H, model I). However, these models are derived under the concept that the respondent obtains some utility for each possible answer and gives the answer that provides the greatest utility. It might be more natural to think that the respondent has some latent measure or index associated with the question and answers in response to how high this measure is. Ordered logit and ordered probit models are derived under this concept.


K. Ordered logit

Let ''Un'' represent the strength of survey respondent ''n''s feelings or opinion on the survey subject. Assume that there are cutoffs of the level of the opinion in choosing particular response. For instance, in the example of the helping people facing foreclosure, the person chooses * 1, if ''Un'' < a * 2, if a < ''Un'' < b * 3, if b < ''Un'' < c * 4, if c < ''Un'' < d * 5, if ''Un'' > d, for some real numbers ''a'', ''b'', ''c'', ''d''. Defining U_n = \beta z_n + \varepsilon, \; \varepsilon \sim Logistic, then the probability of each possible response is: :\begin \Pr(\text 1) & = \Pr(U_n d) = \Pr(\varepsilon > d - \beta z_n) = 1 - \end The parameters of the model are the coefficients ''β'' and the cut-off points , one of which must be normalized for identification. When there are only two possible responses, the ordered logit is the same a binary logit ( model A), with one cut-off point normalized to zero.


L. Ordered probit

The description of the model is the same as model K, except the unobserved terms have
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 ...
instead of logistic. The choice probabilities are (\Phi is the cumulative distribution function of the standard normal distribution): :\begin \Pr(\text 1) &= \Phi (a - \beta z_n) \\ \Pr(\text 2) &= \Phi (b - \beta z_n) - \Phi (a - \beta z_n) \\ &\cdots \end


See also

* *


Notes


References


Further reading

* Anderson, S., A. de Palma and J.-F. Thisse (1992), ''Discrete Choice Theory of Product Differentiation'', MIT Press, * * * * * * {{DEFAULTSORT:Discrete Choice Choice modelling Economics models Mathematical and quantitative methods (economics)