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Page 1: Decision Mak

5s-1 Decision Theory

William J. Stevenson

Operations Management

6th edition

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5s-2 Decision Theory

CHAPTER2s

Decision Making

McGraw-Hill/IrwinOperations Management, Eighth Edition, by William J. StevensonCopyright © 2005 by The McGraw-Hill Companies, Inc. All rights

reserved.

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5s-3 Decision Theory

Decision Theory represents a general approach to decision making which is suitable for a wide range of operations management decisions, including:

product andservice design

equipment selection

location planning

Decision TheoryDecision Theory

Capacityplanning

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5s-4 Decision Theory

A set of possible future conditions exists that will have a bearing on the results of the decision

A list of alternatives for the manager to choose from

A known payoff for each alternative under each possible future condition

Decision Theory ElementsDecision Theory Elements

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5s-5 Decision Theory

Identify possible future conditions called states of nature

Develop a list of possible alternatives, one of which may be to do nothing

Determine the payoff associated with each alternative for every future condition

Decision Theory ProcessDecision Theory Process

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5s-6 Decision Theory

If possible, determine the likelihood of each possible future condition

Evaluate alternatives according to some decision criterion and select the best alternative

Decision Theory Process (Cont’d)Decision Theory Process (Cont’d)

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5s-7 Decision Theory

Bounded Rationality The limitations on decision making caused by costs, human abilities, time, technology, and availability of information

Causes of Poor DecisionsCauses of Poor Decisions

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5s-8 Decision Theory

Suboptimization

The result of different departments each attempting to reach a solution that is optimum for that department

Causes of Poor Decisions (Cont’d)Causes of Poor Decisions (Cont’d)

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5s-9 Decision Theory

Certainty - Environment in which relevant parameters have known values

Risk - Environment in which certain future events have probable outcomes

Uncertainty - Environment in which it is impossible to assess the likelihood of various future events

Decision EnvironmentsDecision Environments

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5s-10 Decision Theory

Maximin - Choose the alternative with the best of the worst possible payoffs

Maximax - Choose the alternative with the best possible payoff

Laplace - Choose the alternative with the best average payoff of any of the alternatives

Minimax Regret - Choose the alternative that has the least of the worst regrets

Decision Making under UncertaintyDecision Making under Uncertainty

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5s-11 Decision Theory

Payoff TablePayoff Table

Alternatives Low Moderate HighSmall facility $10 $10 $10

Medium facility 7 12 12

Large facility (4) 2 16

Possible future demand*

*Present value in $ millions

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5s-12 Decision Theory

Format of a Decision TreeFormat of a Decision Tree

State of nature 1

B

Payoff 1

State of nature 2

Payoff 2

Payoff 3

2

Choose A’1

Choose A’2

Payoff 6State of nature 2

2

Payoff 4

Payoff 5

Choose A’3

Choose A’4

State of nature 1

Choose A’

Choose A’2

1

Decision PointChance Event

Figure 5S.1

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5s-13 Decision Theory

A manager must decide on the size of a video arcade to construct. The A manager must decide on the size of a video arcade to construct. The manager has narrowed the choices to two: large or small. Information has manager has narrowed the choices to two: large or small. Information has been collected on payoffs, and a decision tree has been constructed. Analyze been collected on payoffs, and a decision tree has been constructed. Analyze the decision tree and determine which initial alternative (build small or build the decision tree and determine which initial alternative (build small or build large) should be chosen in order to maximize expected monetary value. large) should be chosen in order to maximize expected monetary value.

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5s-14 Decision Theory

Expected Value of Perfect InformationExpected Value of Perfect InformationApproach I : Expected value of perfect information: the difference between the expected payoff under certainty and the expected payoff under risk

Expected value ofperfect information

Expected payoffunder certainty

Expected payoffunder risk= -

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5s-15 Decision Theory

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5s-16 Decision Theory

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5s-17 Decision Theory

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5s-18 Decision Theory

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5s-19 Decision Theory

Sensitivity AnalysisSensitivity Analysis

16141210 86420

16141210 86420

A

B

C

A bestC bestB best

#1 Payoff #2 Payoff

Sensitivity analysis: determine the range of probability for which an alternative has the best expected payoff

Example S-8


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