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
Probability is the branch of mathematics concerning numerical descriptions of how likely an event is to occur, or how likely it is that a proposition is true. The probability of an event is a number between 0 and 1, where, roughly speaking, ...
to various factors and assigning
numerical consequences to the outcome.
There are three branches of decision theory:
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Normative decision theory: Concerned with the identification of
optimal decisions, where optimality is often determined by considering an ideal decision-maker who is able to calculate with perfect accuracy and is in some sense fully
rational.
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Prescriptive decision theory: Concerned with describing observed behaviors through the use of
conceptual models
Conceptual may refer to:
Philosophy and Humanities
*Concept
*Conceptualism
* Philosophical analysis (Conceptual analysis)
*Theoretical definition (Conceptual definition)
*Thinking about Consciousness (Conceptual dualism)
*Pragmatism (Conceptual p ...
, under the assumption that those making the decisions are behaving under some consistent rules.
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Descriptive decision theory: Analyzes how individuals actually make the decisions that they do.
Decision theory is closely related to the field of
game theory
Game theory is the study of mathematical models of strategic interactions among rational agents. Myerson, Roger B. (1991). ''Game Theory: Analysis of Conflict,'' Harvard University Press, p.&nbs1 Chapter-preview links, ppvii–xi It has appli ...
and is an interdisciplinary topic, studied by economists, mathematicians, data scientists, psychologists, biologists, political and other social scientists, philosophers and computer scientists.
Empirical applications of this theory are usually done with the help of
statistical
Statistics (from German: ''Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industria ...
and
econometric methods.
Normative and descriptive
Normative decision theory is concerned with identification of optimal decisions where optimality is often determined by considering an ideal decision maker who is able to calculate with perfect accuracy and is in some sense fully
rational. The practical application of this prescriptive approach (how people ''ought to'' make decisions) is called
decision analysis and is aimed at finding tools, methodologies, and software (
decision support system
A decision support system (DSS) is an information system that supports business or organizational decision-making activities. DSSs serve the management, operations and planning levels of an organization (usually mid and higher management) and h ...
s) to help people make better decisions.
In contrast, descriptive decision theory is concerned with describing observed behaviors often under the assumption that those making decisions are behaving under some consistent rules. These rules may, for instance, have a procedural framework (e.g.
Amos Tversky
Amos Nathan Tversky ( he, עמוס טברסקי; March 16, 1937 – June 2, 1996) was an Israeli cognitive and mathematical psychologist and a key figure in the discovery of systematic human cognitive bias and handling of risk.
Much of his ...
's elimination by aspects model) or an
axiom
An axiom, postulate, or assumption is a statement that is taken to be true, to serve as a premise or starting point for further reasoning and arguments. The word comes from the Ancient Greek word (), meaning 'that which is thought worthy or f ...
atic framework (e.g.
stochastic transitivity axioms), reconciling the
Von Neumann-Morgenstern axioms with behavioral violations of the
expected utility hypothesis, or they may explicitly give a functional form for
time-inconsistent utility functions (e.g. Laibson's
quasi-hyperbolic discounting).
Prescriptive decision theory is concerned with predictions about behavior that positive decision theory produces to allow for further tests of the kind of decision-making that occurs in practice. In recent decades, there has also been increasing interest in "behavioral decision theory", contributing to a re-evaluation of what useful decision-making requires.
Types of decisions
Choice under uncertainty
The area of choice under uncertainty represents the heart of decision theory. Known from the 17th century (
Blaise Pascal
Blaise Pascal ( , , ; ; 19 June 1623 – 19 August 1662) was a French mathematician, physicist, inventor, philosopher, and Catholic Church, Catholic writer.
He was a child prodigy who was educated by his father, a tax collector in Rouen. Pa ...
invoked it in his
famous wager, which is contained in his ''
Pensées'', published in 1670), the idea of
expected value
In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a l ...
is that, when faced with a number of actions, each of which could give rise to more than one possible outcome with different probabilities, the rational procedure is to identify all possible outcomes, determine their values (positive or negative) and the probabilities that will result from each course of action, and multiply the two to give an "expected value", or the average expectation for an outcome; the action to be chosen should be the one that gives rise to the highest total expected value. In 1738,
Daniel Bernoulli
Daniel Bernoulli FRS (; – 27 March 1782) was a Swiss mathematician and physicist and was one of the many prominent mathematicians in the Bernoulli family from Basel. He is particularly remembered for his applications of mathematics to mechan ...
published an influential paper entitled ''Exposition of a New Theory on the Measurement of Risk'', in which he uses the
St. Petersburg paradox to show that expected value theory must be
normatively wrong. He gives an example in which a Dutch merchant is trying to decide whether to insure a cargo being sent from Amsterdam to St Petersburg in winter. In his solution, he defines a
utility function and computes
expected utility rather than expected financial value.
In the 20th century, interest was reignited by
Abraham Wald's 1939 paper pointing out that the two central procedures of
sampling-distribution-based statistical-theory, namely
hypothesis testing and
parameter estimation, are special cases of the general decision problem. Wald's paper renewed and synthesized many concepts of statistical theory, including
loss function
In mathematical optimization and decision theory, a loss function or cost function (sometimes also called an error function) is a function that maps an event or values of one or more variables onto a real number intuitively representing some "cost ...
s,
risk function
In mathematical optimization and decision theory, a loss function or cost function (sometimes also called an error function) is a function that maps an event or values of one or more variables onto a real number intuitively representing some "cos ...
s,
admissible decision rule
In statistical decision theory, an admissible decision rule is a rule for making a decision such that there is no other rule that is always "better" than it (or at least sometimes better and never worse), in the precise sense of "better" defined ...
s,
antecedent distributions,
Bayesian procedures, and
minimax
Minimax (sometimes MinMax, MM or saddle point) is a decision rule used in artificial intelligence, decision theory, game theory, statistics, and philosophy for ''mini''mizing the possible loss for a worst case (''max''imum loss) scenario. When de ...
procedures. The phrase "decision theory" itself was used in 1950 by
E. L. Lehmann
Erich Leo Lehmann (20 November 1917 – 12 September 2009) was a German-born American statistician, who made a major contribution to nonparametric hypothesis testing. He is one of the eponyms of the Lehmann–Scheffé theorem and of the Hodges– ...
.
The revival of
subjective probability
Bayesian probability is an interpretation of the concept of probability, in which, instead of frequency or propensity of some phenomenon, probability is interpreted as reasonable expectation representing a state of knowledge or as quantification o ...
theory, from the work of
Frank Ramsey,
Bruno de Finetti,
Leonard Savage and others, extended the scope of expected utility theory to situations where subjective probabilities can be used. At the time, von Neumann and Morgenstern's theory of
expected utility proved that expected utility maximization followed from basic postulates about rational behavior.
The work of
Maurice Allais and
Daniel Ellsberg
Daniel Ellsberg (born April 7, 1931) is an American political activist, and former United States military analyst. While employed by the RAND Corporation, Ellsberg precipitated a national political controversy in 1971 when he released the ''Pent ...
showed that human behavior has systematic and sometimes important departures from expected-utility maximization (
Allais paradox and
Ellsberg paradox). The
prospect theory of
Daniel Kahneman
Daniel Kahneman (; he, דניאל כהנמן; born March 5, 1934) is an Israeli-American psychologist and economist notable for his work on the psychology of judgment and decision-making, as well as behavioral economics, for which he was award ...
and
Amos Tversky
Amos Nathan Tversky ( he, עמוס טברסקי; March 16, 1937 – June 2, 1996) was an Israeli cognitive and mathematical psychologist and a key figure in the discovery of systematic human cognitive bias and handling of risk.
Much of his ...
renewed the empirical study of
economic behavior
Behavioral economics studies the effects of psychological, cognitive, emotional, cultural and social factors on the decisions of individuals or institutions, such as how those decisions vary from those implied by classical economic theory ...
with less emphasis on rationality presuppositions. It describes a way by which people make decisions when all of the outcomes carry a risk. Kahneman and Tversky found three regularities – in actual human decision-making, "losses loom larger than gains"; persons focus more on ''changes'' in their utility-states than they focus on absolute utilities; and the estimation of subjective probabilities is severely biased by
anchoring
An anchor is a device, normally made of metal , used to secure a vessel to the bed of a body of water to prevent the craft from drifting due to wind or current. The word derives from Latin ''ancora'', which itself comes from the Greek ἄγ ...
.
Intertemporal choice
Intertemporal choice is concerned with the kind of choice where different actions lead to outcomes that are realised at different stages over time. It is also described as cost-benefit decision making since it involves the choices between rewards that vary according to magnitude and time of arrival. If someone received a windfall of several thousand dollars, they could spend it on an expensive holiday, giving them immediate pleasure, or they could invest it in a pension scheme, giving them an income at some time in the future. What is the optimal thing to do? The answer depends partly on factors such as the expected
rates of interest and
inflation, the person's
life expectancy, and their confidence in the pensions industry. However even with all those factors taken into account, human behavior again deviates greatly from the predictions of prescriptive decision theory, leading to alternative models in which, for example, objective interest rates are replaced by
subjective discount rates.
Interaction of decision makers
Some decisions are difficult because of the need to take into account how other people in the situation will respond to the decision that is taken. The analysis of such social decisions is more often treated under the label of
game theory
Game theory is the study of mathematical models of strategic interactions among rational agents. Myerson, Roger B. (1991). ''Game Theory: Analysis of Conflict,'' Harvard University Press, p.&nbs1 Chapter-preview links, ppvii–xi It has appli ...
, rather than decision theory, though it involves the same mathematical methods. From the standpoint of game theory, most of the problems treated in decision theory are one-player games (or the one player is viewed as playing against an impersonal background situation). In the emerging field of
socio-cognitive engineering, the research is especially focused on the different types of distributed decision-making in human organizations, in normal and abnormal/emergency/crisis situations.
Complex decisions
Other areas of decision theory are concerned with decisions that are difficult simply because of their complexity, or the complexity of the organization that has to make them. Individuals making decisions are limited in resources (i.e. time and intelligence) and are therefore
boundedly rational; the issue is thus, more than the deviation between real and optimal behaviour, the difficulty of determining the optimal behaviour in the first place. One example is the model of economic growth and resource usage developed by the
Club of Rome
The Club of Rome is a nonprofit, informal organization of intellectuals and business leaders whose goal is a critical discussion of pressing global issues. The Club of Rome was founded in 1968 at Accademia dei Lincei in Rome, Italy. It consists ...
to help politicians make real-life decisions in complex situations. Decisions are also affected by whether options are framed together or separately; this is known as the
distinction bias.
Heuristics
Heuristics in decision-making is the ability of making decisions based on unjustified or routine thinking. While quicker than step-by-step processing, heuristic thinking is also more likely to involve fallacies or inaccuracies.
The main use for heuristics in our daily routines is to decrease the amount of evaluative thinking we perform when making simple decisions, making them instead based on unconscious rules and focusing on some aspects of the decision, while ignoring others.
One example of a common and erroneous thought process that arises through heuristic thinking is the
Gambler's Fallacy — believing that an isolated random event is affected by previous isolated random events. For example, if a fair coin is flipped to tails for a couple of turns, it still has the same probability (i.e., 0.5) of doing so in future turns, though intuitively it seems more likely for it to roll heads soon.
This happens because, due to routine thinking, one disregards the probability and concentrates on the ratio of the outcomes, meaning that one expects that in the long run the ratio of flips should be half for each outcome.
Another example is that decision-makers may be biased towards preferring moderate alternatives to extreme ones. The ''Compromise Effect'' operates under a mindset that the most moderate option carries the most benefit. In an incomplete information scenario, as in most daily decisions, the moderate option will look more appealing than either extreme, independent of the context, based only on the fact that it has characteristics that can be found at either extreme.
Alternatives
A highly controversial issue is whether one can replace the use of probability in decision theory with something else.
Probability theory
Advocates for the use of probability theory point to:
* the work of
Richard Threlkeld Cox for justification of the probability axioms,
* the
Dutch book paradoxes of
Bruno de Finetti as illustrative of the theoretical difficulties that can arise from departures from the probability axioms, and
* the complete class theorems, which show that all
admissible decision rule
In statistical decision theory, an admissible decision rule is a rule for making a decision such that there is no other rule that is always "better" than it (or at least sometimes better and never worse), in the precise sense of "better" defined ...
s are equivalent to the Bayesian decision rule for some utility function and some
prior distribution (or for the limit of a sequence of prior distributions). Thus, for every decision rule, either the rule may be reformulated as a
Bayesian procedure (or a limit of a sequence of such), or there is a rule that is sometimes better and never worse.
Alternatives to probability theory
The proponents of
fuzzy logic
Fuzzy logic is a form of many-valued logic in which the truth value of variables may be any real number between 0 and 1. It is employed to handle the concept of partial truth, where the truth value may range between completely true and completely ...
,
possibility theory,
quantum cognition
Quantum cognition is an emerging field which applies the mathematical formalism of quantum theory to model cognitive phenomena such as information processing by the human brain, language, decision making, human memory, concepts and conceptual re ...
,
Dempster–Shafer theory, and
info-gap decision theory maintain that probability is only one of many alternatives and point to many examples where non-standard alternatives have been implemented with apparent success; notably, probabilistic decision theory is
sensitive to assumptions about the probabilities of various events, whereas non-probabilistic rules, such as
minimax
Minimax (sometimes MinMax, MM or saddle point) is a decision rule used in artificial intelligence, decision theory, game theory, statistics, and philosophy for ''mini''mizing the possible loss for a worst case (''max''imum loss) scenario. When de ...
, are
robust in that they do not make such assumptions.
Ludic fallacy
A general criticism of decision theory based on a fixed universe of possibilities is that it considers the "known unknowns", not the "
unknown unknowns
"There are unknown unknowns" is a phrase from a response United States Secretary of Defense Donald Rumsfeld gave to a question at a U.S. Department of Defense (DoD) news briefing on February 12, 2002, about the lack of evidence linking the gov ...
":
[ ] it focuses on expected variations, not on unforeseen events, which some argue have outsized impact and must be considered – significant events may be "outside model". This line of argument, called the
ludic fallacy, is that there are inevitable imperfections in modeling the real world by particular models, and that unquestioning reliance on models blinds one to their limits.
See also
*
Bayesian epistemology
*
Bayesian statistics
*
Causal decision theory
*
Choice modelling Choice modelling attempts to model the decision process of an individual or segment via revealed preferences or stated preferences made in a particular context or contexts. Typically, it attempts to use discrete choices (A over B; B over A, B & C) ...
*
Constraint satisfaction
*
Daniel Kahneman
Daniel Kahneman (; he, דניאל כהנמן; born March 5, 1934) is an Israeli-American psychologist and economist notable for his work on the psychology of judgment and decision-making, as well as behavioral economics, for which he was award ...
*
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 ...
*
Decision quality
*
Emotional choice theory
*
Evidential decision theory
*
Game theory
Game theory is the study of mathematical models of strategic interactions among rational agents. Myerson, Roger B. (1991). ''Game Theory: Analysis of Conflict,'' Harvard University Press, p.&nbs1 Chapter-preview links, ppvii–xi It has appli ...
*
Multi-criteria decision making
*
Newcomb's paradox
*
Operations research
*
Optimal decision
*
Preference (economics)
In economics and other social sciences, preference is the order that an agent gives to alternatives based on their relative utility. A process which results in an "optimal choice" (whether real or theoretical). Preferences are evaluations and conc ...
*
Prospect theory
*
Quantum cognition
Quantum cognition is an emerging field which applies the mathematical formalism of quantum theory to model cognitive phenomena such as information processing by the human brain, language, decision making, human memory, concepts and conceptual re ...
*
Rational choice theory
Rational choice theory refers to a set of guidelines that help understand economic and social behaviour. The theory originated in the eighteenth century and can be traced back to political economist and philosopher, Adam Smith. The theory postula ...
*
Rationality
Rationality is the quality of being guided by or based on reasons. In this regard, a person acts rationally if they have a good reason for what they do or a belief is rational if it is based on strong evidence. This quality can apply to an abil ...
*
Secretary problem
*
Signal detection theory
*
Small-numbers game
In economics and decision theory, a small-numbers game is a situation in an oligopolistic market
Market is a term used to describe concepts such as:
*Market (economics), system in which parties engage in transactions according to supply and dema ...
*
Stochastic dominance
Stochastic dominance is a partial order between random variables. It is a form of stochastic ordering. The concept arises in decision theory and decision analysis in situations where one gamble (a probability distribution over possible outcomes, ...
*
TOTREP Trade-off talking rational economic person (TOTREP) is one term, among others, used to denote, in the field of choice analysis, the rational, human agent of economic decisions.
Origin of the term
The term was first used notably in David M. Kreps' ' ...
*
Two envelopes problem
References
Further reading
*
* (''an overview of the philosophical foundations of key mathematical axioms in subjective expected utility theory – mainly normative'')
*
*
*
* ''(covers normative decision theory)''
*
* (translation of 1931 article)
*
: de Finetti, Bruno. "Foresight: its Logical Laws, Its Subjective Sources," (translation of th
1937 articlein French) in H. E. Kyburg and H. E. Smokler (eds), ''Studies in Subjective Probability,'' New York: Wiley, 1964.
* de Finetti, Bruno. ''Theory of Probability'', (translation by
AFM Smith of 1970 book) 2 volumes, New York: Wiley, 1974-5.
* De Groot, Morris, ''Optimal Statistical Decisions''. Wiley Classics Library. 2004. (Originally published 1970.) .
* ''(covers both normative and descriptive theory)''
*
* Khemani, Karan
Ignorance is Bliss: A study on how and why humans depend on recognition heuristics in social relationships, the equity markets and the brand market-place, thereby making successful decisions 2005.
* Klebanov, Lev. B., Svetlozat T. Rachev and Frank J. Fabozzi, eds. (2009). ''Non-Robust Models in Statistics'', New York: Nova Scientific Publishers, Inc.
* A rational presentation of probabilistic analysis.
*
*
*
* Reprinted in Shafer & Pearl. ''(also about normative decision theory)''
* http://psychclassics.yorku.ca/Peirce/small-diffs.htm
*
*
*
*
*
Ramsey, Frank Plumpton; "Truth and Probability"
PDF, Chapter VII in ''The Foundations of Mathematics and other Logical Essays'' (1931).
*
*
*
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Statistical inference
Risk
Control theory
Formal sciences
Epistemology of science
Mathematical and quantitative methods (economics)