Scenario Approach
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The scenario approach or scenario optimization approach is a technique for obtaining solutions to
robust optimization Robust optimization is a field of mathematical optimization theory that deals with optimization problems in which a certain measure of robustness is sought against uncertainty that can be represented as deterministic variability in the value of the ...
and chance-constrained optimization problems based on a sample of the constraints. It also relates to
inductive reasoning Inductive reasoning is a method of reasoning in which a general principle is derived from a body of observations. It consists of making broad generalizations based on specific observations. Inductive reasoning is distinct from ''deductive'' re ...
in modeling and decision-making. The technique has existed for decades as a heuristic approach and has more recently been given a systematic theoretical foundation. In optimization, robustness features translate into constraints that are parameterized by the uncertain elements of the problem. In the scenario method, a solution is obtained by only looking at a random sample of constraints ( heuristic approach) called ''scenarios'' and a deeply-grounded theory tells the user how “robust” the corresponding solution is related to other constraints. This theory justifies the use of randomization in robust and chance-constrained optimization.


Data-driven optimization

At times, scenarios are obtained as random extractions from a model. More often, however, scenarios are instances of the uncertain constraints that are obtained as observations (
data-driven science Data science is an interdisciplinary field that uses scientific methods, processes, algorithms and systems to extract or extrapolate knowledge and insights from noisy, structured and unstructured data, and apply knowledge from data across a bro ...
). In this latter case, no model of uncertainty is needed to generate scenarios. Moreover, most remarkably, also in this case scenario optimization comes accompanied by a full-fledged theory because all scenario optimization results are distribution-free and can therefore be applied even when a model of uncertainty is not available.


Theoretical results

For constraints that are convex (e.g. in semidefinite problems, involving LMIs (Linear Matrix Inequalities)), a deep theoretical analysis has been established which shows that the probability that a new constraint is not satisfied follows a distribution that is dominated by a
Beta distribution In probability theory and statistics, the beta distribution is a family of continuous probability distributions defined on the interval , 1in terms of two positive parameters, denoted by ''alpha'' (''α'') and ''beta'' (''β''), that appear as ...
. This result is tight since it is exact for a whole class of convex problems. More generally, various empirical levels have been shown to follow a
Dirichlet distribution In probability and statistics, the Dirichlet distribution (after Peter Gustav Lejeune Dirichlet), often denoted \operatorname(\boldsymbol\alpha), is a family of continuous multivariate probability distributions parameterized by a vector \boldsymb ...
, whose marginals are beta distribution. The scenario approach with L_1 regularization has also been considered, and handy algorithms with reduced computational complexity are available. Extensions to more complex, non-convex, set-ups are still objects of active investigation. Along the scenario approach, it is also possible to pursue a risk-return trade-off. Moreover, a full-fledged method can be used to apply this approach to control. First N constraints are sampled and then the user starts removing some of the constraints in succession. This can be done in different ways, even according to greedy algorithms. After elimination of one more constraint, the optimal solution is updated, and the corresponding optimal value is determined. As this procedure moves on, the user constructs an empirical “curve of values”, i.e. the curve representing the value achieved after the removing of an increasing number of constraints. The scenario theory provides precise evaluations of how robust the various solutions are. A remarkable advance in the theory has been established by the recent wait-and-judge approach: one assesses the complexity of the solution (as precisely defined in the referenced article) and from its value formulates precise evaluations on the robustness of the solution. These results shed light on deeply-grounded links between the concepts of complexity and risk. A related approach, named "Repetitive Scenario Design" aims at reducing the sample complexity of the solution by repeatedly alternating a scenario design phase (with reduced number of samples) with a randomized check of the feasibility of the ensuing solution.


Example

Consider a function R_\delta(x) which represents the return of an
investment Investment is the dedication of money to purchase of an asset to attain an increase in value over a period of time. Investment requires a sacrifice of some present asset, such as time, money, or effort. In finance, the purpose of investing i ...
; it depends on our vector of investment choices x and on the market state \delta which will be experienced at the end of the investment period. Given a stochastic model for the market conditions, we consider N of the possible states \delta_1, \dots, \delta_N (randomization of uncertainty). Alternatively, the scenarios \delta_i can be obtained from a record of observations. We set out to solve the scenario optimization program : \max_x \min_ R_(x). \ \ \ \ \ \ \ \ \ \ \ \ \ \ \ (1) This corresponds to choosing a portfolio vector ''x'' so as to obtain the best possible return in the worst-case scenario. After solving (1), an optimal investment strategy x^\ast is achieved along with the corresponding optimal return R^\ast. While R^\ast has been obtained by looking at N possible market states only, the scenario theory tells us that the solution is robust up to a level \varepsilon, that is, the return R^\ast will be achieved with probability 1 - \varepsilon for other market states. In quantitative finance, the worst-case approach can be overconservative. One alternative is to discard some odd situations to reduce pessimism; moreover, scenario optimization can be applied to other risk-measures including CVaR – Conditional Value at Risk – so adding to the flexibility of its use.{{Cite journal , doi=10.1016/j.ejor.2017.11.022, title=Expected shortfall: Heuristics and certificates, year=2018, last1=Ramponi, first1=Federico Alessandro, last2=Campi, first2=Marco C., journal=European Journal of Operational Research, volume=267, issue=3, pages=1003–1013


Application fields

Fields of application include:
prediction A prediction (Latin ''præ-'', "before," and ''dicere'', "to say"), or forecast, is a statement about a future event or data. They are often, but not always, based upon experience or knowledge. There is no universal agreement about the exact ...
, systems theory, regression analysis (
Interval Predictor Model In regression analysis, an interval predictor model (IPM) is an approach to regression where bounds on the function to be approximated are obtained. This differs from other techniques in machine learning, where usually one wishes to estimate point v ...
s in particular), Actuarial science,
optimal control Optimal control theory is a branch of mathematical optimization that deals with finding a control for a dynamical system over a period of time such that an objective function is optimized. It has numerous applications in science, engineering and ...
, financial mathematics, machine learning,
decision making In psychology, decision-making (also spelled decision making and decisionmaking) is regarded as the cognitive process resulting in the selection of a belief or a course of action among several possible alternative options. It could be either rati ...
,
supply chain In commerce, a supply chain is a network of facilities that procure raw materials, transform them into intermediate goods and then final products to customers through a distribution system. It refers to the network of organizations, people, acti ...
, and management.


References

Stochastic optimization Optimal decisions Control theory Mathematical finance