Information about Decision Sciences
Decision theory is an area of study of discrete mathematics, related to and of interest to practitioners in all branches of science, engineering and in all human social activities. It is concerned with how real or ideal decision-makers make or should make decisions, and how optimal decisions can be reached.
Since it is obvious that people do not typically behave in optimal ways, there is also a related area of study, which is a positive or descriptive discipline, attempting to describe what people will actually do. Since the normative, optimal decision often creates hypotheses for testing against actual behaviour, the two fields are closely linked. Furthermore it is possible to relax the assumptions of perfect information, rationality and so forth in various ways, and produce a series of different prescriptions or predictions about behaviour, allowing for further tests of the kind of decision-making that occurs in practice.
In the 20th century, interest was reignited by Abraham Wald's 1939 paper pointing out that the two central concerns of orthodox statistical theory at that time, namely statistical hypothesis testing and statistical estimation theory, could both be regarded as particular special cases of the more general decision problem. This paper introduced much of the mental landscape of modern decision theory, including loss functions, risk functions, admissible decision rules, a priori distributions, Bayes decision rules, and minimax decision rules. The phrase "decision theory" itself was first used in 1950 by E. L. Lehmann.
The rise of subjective probability theory, from the work of Frank Ramsey, Bruno de Finetti, Leonard Savage and others, extended the scope of expected utility theory to situations where only subjective probabilities are available. At this time it was generally assumed in economics that people behave as rational agents and thus expected utility theory also provided a theory of actual human decision-making behaviour under risk. The work of Maurice Allais and Daniel Ellsberg showed that this was clearly not so. The prospect theory of Daniel Kahneman and Amos Tversky placed behavioural economics on a more evidence-based footing. It emphasized that in actual human (as opposed to normatively correct) decision-making "losses loom larger than gains", people are more focused on changes in their utility states than the states themselves and estimation of subjective probabilities is severely biased by anchoring.
Castiglione and LiCalzi(1996), Bordley and LiCalzi (2000) recently showed that maximizing expected utility is mathematical equivalent to maximizing the probability that the uncertain consequences of the decision are preferable to uncertain benchmark (e.g., the probability that a mutual fund strategy outperforms the S&P 500 or that a firm outperforms the uncertain future performance of a major competitor.) This reinterpretation relates to psychological work suggesting that individuals seek to achieve fuzzy aspiration levels (Lopes & Oden) which may vary from choice context to choice context. Hence it shifts the focus from utility to the individual's uncertain reference point.
One example shows a structure for deciding guilt in a criminal trial:
Advocates of probability theory point to:
Normative and descriptive decision theory
Most of decision theory is normative or prescriptive, i.e. it is concerned with identifying the best decision to take, assuming an ideal decision maker who is fully informed, able to compute with perfect accuracy, and fully rational. The practical application of this prescriptive approach (how people should make decisions) is called decision analysis, and aimed at finding tools, methodologies and software to help people make better decisions. The most systematic and comprehensive software tools developed in this way are called decision support systems.Since it is obvious that people do not typically behave in optimal ways, there is also a related area of study, which is a positive or descriptive discipline, attempting to describe what people will actually do. Since the normative, optimal decision often creates hypotheses for testing against actual behaviour, the two fields are closely linked. Furthermore it is possible to relax the assumptions of perfect information, rationality and so forth in various ways, and produce a series of different prescriptions or predictions about behaviour, allowing for further tests of the kind of decision-making that occurs in practice.
What kinds of decisions need a theory?
Choice between incommensurable commodities
This area is concerned with the decision whether to have, say, one ton of guns and three tons of butter, or two tons of guns and one ton of butter. This is the classic subject of study of microeconomics and is rarely considered under the heading of decision theory, but such choices are often in fact part of the issues that are considered within decision theory.Choice under uncertainty
This area represents the heartland of decision theory. The procedure now referred to as expected value was known from the 17th century. Blaise Pascal invoked it in his famous wager (see below), which is contained in his Pensées, published in 1670. The idea of expected value 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. The action to be chosen should be the one that gives rise to the highest total expected value. In 1738, Daniel Bernoulli 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 also 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, when it is known that there is a 5% chance that the ship and cargo will be lost. 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 concerns of orthodox statistical theory at that time, namely statistical hypothesis testing and statistical estimation theory, could both be regarded as particular special cases of the more general decision problem. This paper introduced much of the mental landscape of modern decision theory, including loss functions, risk functions, admissible decision rules, a priori distributions, Bayes decision rules, and minimax decision rules. The phrase "decision theory" itself was first used in 1950 by E. L. Lehmann.
The rise of subjective probability theory, from the work of Frank Ramsey, Bruno de Finetti, Leonard Savage and others, extended the scope of expected utility theory to situations where only subjective probabilities are available. At this time it was generally assumed in economics that people behave as rational agents and thus expected utility theory also provided a theory of actual human decision-making behaviour under risk. The work of Maurice Allais and Daniel Ellsberg showed that this was clearly not so. The prospect theory of Daniel Kahneman and Amos Tversky placed behavioural economics on a more evidence-based footing. It emphasized that in actual human (as opposed to normatively correct) decision-making "losses loom larger than gains", people are more focused on changes in their utility states than the states themselves and estimation of subjective probabilities is severely biased by anchoring.
Castiglione and LiCalzi(1996), Bordley and LiCalzi (2000) recently showed that maximizing expected utility is mathematical equivalent to maximizing the probability that the uncertain consequences of the decision are preferable to uncertain benchmark (e.g., the probability that a mutual fund strategy outperforms the S&P 500 or that a firm outperforms the uncertain future performance of a major competitor.) This reinterpretation relates to psychological work suggesting that individuals seek to achieve fuzzy aspiration levels (Lopes & Oden) which may vary from choice context to choice context. Hence it shifts the focus from utility to the individual's uncertain reference point.
Pascal's Wager
Pascal's Wager is a classic example of a choice under uncertainty. The uncertainty, according to Pascal, is whether or not God exists. Belief or non-belief in God is the choice to be made. However, the reward for belief in God if God actually does exist is infinite. Therefore, however small the probability of God's existence, the expected value of belief exceeds that of non-belief, so it is better to believe in God. (There are several criticisms of the argument.)Intertemporal choice
This area is concerned with the kind of choice where different actions lead to outcomes that are realised at different points in time. 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.Competing 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 the business of game theory, and is not normally considered part of decision theory, though it is closely related. In the emerging socio-cognitive engineering the research is especially focused on the different types of distributed decision-making in human organizations, in normal and abnormal/emergergency/crisis situations. The signal detection theory is based on the Decision theory.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. In such cases the issue is not the deviation between real and optimal behaviour, but the difficulty of determining the optimal behaviour in the first place. The Club of Rome, for example, developed a model of economic growth and resource usage that helps politicians make real-life decisions in complex situations.Paradox of choice
Observed in many cases is the paradox that more choices may lead to a poorer decision or a failure to make a decision at all. It is sometimes theorized to be caused by analysis paralysis, real or perceived, or perhaps from rational ignorance. A number of researchers including Sheena S. Iyengar and Mark R. Lepper have published studies on this phenomenon. (Goode, 2001) A popularization of this analysis was done by Barry Schwartz in his 2004 book, The Paradox of Choice.Statistical decision theory
Several statistial tools and methods are available to organize evidence, evaluate risks, and aid in decision making. The risks of Type I and type II errors can be quantified and rational decision making is improved.One example shows a structure for deciding guilt in a criminal trial:
| Actual condition | |||
|---|---|---|---|
| + | Guilty | Not guilty | |
| Decision | Verdict of 'guilty' | True Positive | False Positive (i.e. guilt reported unfairly) Type I error |
| Verdict of 'not guilty' |
False Negative (i.e. guilt not detected) Type II error | True Negative | + |
Alternatives to probability theory
A highly controversial issue is whether one can replace the use of probability in decision theory by other alternatives. The proponents of fuzzy logic, possibility theory, 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. Work by Yousef and others advocate exotic probability theories using complex-valued probability theories based on the probability amplitudes developed and validated by Birkhoff and Von Neumann in quantum physics.Advocates 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 to
- the complete class theorems which show that all admissible decision rules are equivalent to a Bayesian decision rule with some prior distribution (possibly improper) and some utility function. Thus, for any decision rule generated by non-probabilistic methods, either there is an equivalent rule derivable by Bayesian means, or there is a rule derivable by Bayesian means which is never worse and (at least) sometimes better.
See also
References
- Paul Anand, "Foundations of Rational Choice Under Risk", Oxford, Oxford University Press (an overview of the philosophical foundations of key mathematical axioms in subjective expected utility theory - mainly normative) 1993 repr 1995 2002
- Sven Ove Hansson, "Decision Theory: A Brief Introduction", http://www.infra.kth.se/~soh/decisiontheory.pdf (an excellent non-technical and fairly comprehensive primer)
- Paul Goodwin and George Wright, Decision Analysis for Management Judgment, 3rd edition. Chichester: Wiley, 2004 ISBN 0-470-86108-8 (covers both normative and descriptive theory)
- Robert Clemen. Making Hard Decisions: An Introduction to Decision Analysis, 2nd edition. Belmont CA: Duxbury Press, 1996. (covers normative decision theory)
- D.W. North. "A tutorial introduction to decision theory". IEEE Trans. Systems Science and Cybernetics, 4(3), 1968. Reprinted in Shafer & Pearl. (also about normative decision theory)
- Glenn Shafer and Judea Pearl, editors. Readings in uncertain reasoning. Morgan Kaufmann, San Mateo, CA, 1990.
- Howard Raiffa Decision Analysis: Introductory Readings on Choices Under Uncertainty. McGraw Hill. 1997. ISBN 0-07-052579-X
- Morris De Groot Optimal Statistical Decisions. Wiley Classics Library. 2004. (Originally published 1970.) ISBN 0-471-68029-X.
- 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.
- J.Q. Smith Decision Analysis: A Bayesian Approach. Chapman and Hall. 1988. ISBN 0-412-27520-1
- Akerlof, George A. and Janet L. YELLEN, Rational Models of Irrational Behavior
- Arthur, W. Brian, Designing Economic Agents that Act like Human Agents: A Behavioral Approach to Bounded Rationality
- James O. Berger Statistical Decision Theory and Bayesian Analysis. Second Edition. 1980. Springer Series in Statistics. ISBN 0-387-96098-8.
- Goode, Erica. (2001) In Weird Math of Choices, 6 Choices Can Beat 600. The New York Times. Retrieved May 16, 2005.
- Miller, L. (1985). Cognitive risk taking after frontal or temporal lobectomy I. The synthesis of fragmented visual information. Neuropsychologia, 23, 359 369.
- Miller, L., & Milner, B. (1985). Cognitive risk taking after frontal or temporal lobectomy II. The synthesis of phonemic and semantic information. Neuropsychologia, 23, 371 379.
- Anderson, Barry F. The Three Secrets of Wise Decision Making. Single Reef Press. 2002. ISBN 0-9722177-0-3.
Discrete mathematics, also called finite mathematics or Decision Maths, is the study of mathematical structures that are fundamentally discrete, in the sense of not supporting or requiring the notion of continuity.
..... Click the link for more information.
..... Click the link for more information.
Science (from the Latin scientia, 'knowledge'), in the broadest sense, refers to any systematic knowledge or practice.[1] Examples of the broader use included political science and computer science, which are not incorrectly named, but rather named according to
..... Click the link for more information.
..... Click the link for more information.
Engineering is the applied science of acquiring and applying knowledge to design, analysis, and/or construction of works for practical purposes. The American Engineers' Council for Professional Development, also known as ECPD,[1] (later ABET [2]
..... Click the link for more information.
..... Click the link for more information.
Decision making is the cognitive process leading to the selection of a course of action among variations. Every decision making process produces a final choice. It can be an action or an opinion. It begins when we need to do something but know not what.
..... Click the link for more information.
..... Click the link for more information.
A decision is a final product of a specific mental/cognitive process by an individual or group, which is called decision making, or in more detail, Inactive decision making, Reactive decision making, and Proactive decision making. Therefore it is a subjective concept.
..... Click the link for more information.
..... Click the link for more information.
Normative has specialized meanings in several academic disciplines. Generically, it means relating to a typical standard or model.
..... Click the link for more information.
Philosophy
In philosophy, normative is usually contrasted with positive (i.e...... Click the link for more information.
In linguistics, prescription can refer both to the codification and the enforcement of rules governing how a language is to be used. These rules can cover such topics as standards for spelling and grammar or syntax; or rules for what is deemed socially or politically correct.
..... Click the link for more information.
..... Click the link for more information.
Rational may be:
..... Click the link for more information.
- pertaining to rationality
- acting according to the philosophical principles of rationalism
- a mathematical term for certain numbers; the rational numbers
..... Click the link for more information.
Decision Analysis (DA) is the discipline comprising the philosophy, theory, methodology, and professional practice necessary to address important decisions in a formal manner.
..... Click the link for more information.
..... Click the link for more information.
Decision support systems are a class of computer-based information systems including knowledge based systems that support decision making activities.
..... Click the link for more information.
Definitions
Because there are many approaches to decision-making and because of the wide range of domains in which..... Click the link for more information.
Positive may refer to:
..... Click the link for more information.
Mathematics and science
- Positive number, a number that is greater than 0
- Positive operator, in functional analysis, a bounded linear operator whose spectrum consists of positive real numbers
- Positive electric charge, in physics
..... Click the link for more information.
In linguistics, prescription can refer both to the codification and the enforcement of rules governing how a language is to be used. These rules can cover such topics as standards for spelling and grammar or syntax; or rules for what is deemed socially or politically correct.
..... Click the link for more information.
..... Click the link for more information.
Microeconomics (or price theory) is a branch of economics that studies how individuals, households, and firms make decisions to allocate limited resources,[1] typically in markets where goods or services are being bought and sold.
..... Click the link for more information.
..... Click the link for more information.
expected value (or mathematical expectation, or mean) of a discrete random variable is the sum of the probability of each possible outcome of the experiment multiplied by the outcome value (or payoff).
..... Click the link for more information.
..... Click the link for more information.
Blaise Pascal (pronounced [blɛːz paskal]), (June 19 1623 – August 19 1662) was a French mathematician, physicist, and religious philosopher. He was a child prodigy who was educated by his father.
..... Click the link for more information.
..... Click the link for more information.
The Pensées (literally, "thoughts") represented a defense of the Christian religion by Blaise Pascal, the renowned 17th century philosopher and mathematician. Pascal's own religious conversion had led him into a life of asceticism, and the Pensées
..... Click the link for more information.
..... Click the link for more information.
Daniel Bernoulli (February 8, 1700 – March 17, 1782) was a Dutch-born mathematician who spent much of his life in Basel, Switzerland where he died. A member of a talented family of mathematicians, physicists and philosophers, he is particularly remembered for his
..... Click the link for more information.
..... Click the link for more information.
The external links in this article or section may require cleanup to comply with Wikipedia's content policies.
Please [ improve this article] by removing excessive or inappropriate external links. Please remove this tag when this is done.
..... Click the link for more information.
Please [ improve this article] by removing excessive or inappropriate external links. Please remove this tag when this is done.
..... Click the link for more information.
Normative has specialized meanings in several academic disciplines. Generically, it means relating to a typical standard or model.
..... Click the link for more information.
Philosophy
In philosophy, normative is usually contrasted with positive (i.e...... Click the link for more information.
Amsterdam
Canal houses alongside the Prinsengracht
Flag
Coat of arms
Nickname: Mokum
Motto: Heldhaftig, Vastberaden, Barmhartig
(Valiant, Determined, Compassionate)
..... Click the link for more information.
Canal houses alongside the Prinsengracht
Flag
Coat of arms
Nickname: Mokum
Motto: Heldhaftig, Vastberaden, Barmhartig
(Valiant, Determined, Compassionate)
..... Click the link for more information.
Санкт-Петербург
Saint Petersburg
The English Embankment with Saint Isaac's Cathedral
Flag Coat of arms
Nickname
"Piter"
Location
..... Click the link for more information.
Saint Petersburg
The English Embankment with Saint Isaac's Cathedral
Flag Coat of arms
Nickname
"Piter"
Location
..... Click the link for more information.
In economics, utility is a measure of the relative satisfaction or desiredness from consumption of goods. Given this measure, one may speak meaningfully of increasing or decreasing utility, and thereby explain economic behavior in terms of attempts to increase one's utility.
..... Click the link for more information.
..... Click the link for more information.
The expected utility hypothesis is the hypothesis in economics that the utility of an facing uncertainty is calculated by considering utility in each possible state and constructing a weighted average. The weights are the agent's estimate of the probability of each state.
..... Click the link for more information.
..... Click the link for more information.
Abraham Wald (October 31 1902 - December 13 1950) was a mathematician born in Kolozsvár, Hungary (now Cluj, Romania) who contributed to decision theory, geometry, and econometrics, and founded the field of statistical sequential analysis (see sequential probability ratio test).
..... Click the link for more information.
..... Click the link for more information.
Frequency probability is the interpretation of probability that defines an event's probability as the "limit" of its relative frequency in a large number of trials.
..... Click the link for more information.
..... Click the link for more information.
statistical hypothesis test, or more briefly, hypothesis test, is an algorithm to state the alternative (for or against the hypothesis) which minimizes certain risks.
This article describes the commonly used frequentist treatment of hypothesis testing.
..... Click the link for more information.
This article describes the commonly used frequentist treatment of hypothesis testing.
..... Click the link for more information.
Estimation theory is a branch of statistics and signal processing that deals with estimating the values of parameters based on measured/empirical data. The parameters describe the physical scenario or object that answers a question posed by the estimator.
..... Click the link for more information.
..... Click the link for more information.
In statistics, decision theory and economics, a loss function is a function that maps an event (technically an element of a sample space) onto a real number representing the economic cost or regret associated with the event.
..... Click the link for more information.
..... Click the link for more information.
risk of an estimator δ(x) to be calculated from some observables x is the expected value of the loss function as a function on the unknown underlying state of nature θ:
..... Click the link for more information.
- .
..... Click the link for more information.
In classical (frequentist) decision theory, an admissible decision rule is a rule for making a decision that is "better" than any other rule that may compete with it, in a specific sense defined below.
..... Click the link for more information.
..... Click the link for more information.
This article is copied from an article on Wikipedia.org - the free encyclopedia created and edited by online user community. The text was not checked or edited by anyone on our staff. Although the vast majority of the wikipedia encyclopedia articles provide accurate and timely information please do not assume the accuracy of any particular article. This article is distributed under the terms of GNU Free Documentation License.
Herod_Archelaus