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Decision Analysis Part 1

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Title: Decision Analysis Part 1


1
Decision AnalysisPart 1
Graduate Program in Business Information Systems
Asli Sencer Erdem
2
References
  • Heizer J., Render, B., Operations Management, 7e,
    2004.
  • Render, B., Stair R. M., Quantitative Analysis
    for Management, 8e, 2003.
  • Anderson, D.R., Sweeney D.J, Williams T.A.,
    Statistics for Business and Economics, 8e, 2002.
  • Taha, H., Operations Research, 1997.

3
  • The business executive is by profession a
    decision maker.
  • Uncertainty is his opponent.
  • Overcoming it is his mission.
  • John McDonald

4
Analytical Decision Making
  • Can Help Managers to
  • Gain deeper insight into the nature of business
    relationships
  • Find better ways to assess values in such
    relationships and
  • See a way of reducing, or at least understanding,
    uncertainty that surrounds business plans and
    actions

5
Steps to Analytical DM
  • Define problem and influencing factors
  • Establish decision criteria
  • Select decision-making tool (model)
  • Identify and evaluate alternatives using
    decision-making tool (model)
  • Select best alternative
  • Implement decision
  • Evaluate the outcome

6
Models
  • Are less expensive and disruptive than
    experimenting with the real world system
  • Allow operations managers to ask What if types
    of questions
  • Are built for management problems and encourage
    management input
  • Force a consistent and systematic approach to the
    analysis of problems
  • Require managers to be specific about constraints
    and goals relating to a problem
  • Help reduce the time needed in decision making

7
Limitations of the Models
  • They may be expensive and time-consuming to
    develop and test
  • often misused and misunderstood (and feared)
    because of their mathematical and logical
    complexity
  • tend to downplay the role and value of
    nonquantifiable information
  • often have assumptions that oversimplify the
    variables of the real world

8
The Decision-Making Process
9
Displaying a Decision Problem
  • Decision trees
  • Decision tables

10
Types of Decision Models
  • Decision making under uncertainty
  • Decision making under risk
  • Decision making under certainty

11
Fundamentals of Decision Theory
  • Terms
  • Alternative course of action or choice
  • State of nature an occurrence over which the
    decision maker has no control
  • Symbols used in a decision tree
  • A decision node from which one of several
    alternatives may be selected
  • A state of nature node out of which one state of
    nature will occur

12
Decision Table
States of Nature
State 1
State 2
Alternatives
Outcome 1
Outcome 2
Alternative 1
Outcome 3
Outcome 4
Alternative 2
13
Getz Products Decision Tree
14
Decision Making under Uncertainty
  • Maximax - Choose the alternative that maximizes
    the maximum outcome for every alternative
    (Optimistic criterion)
  • Maximin - Choose the alternative that maximizes
    the minimum outcome for every alternative
    (Pessimistic criterion)
  • Equally likely - chose the alternative with the
    highest average outcome.

15
Example
16
Decision criteria
  • The maximax choice is to construct a large plant.
    This is the maximum of the maximum number within
    each row or alternative.
  • The maximin choice is to do nothing. This is the
    maximum of the minimum number within each row or
    alternative.
  • The equally likely choice is to construct a small
    plant. This is the maximum of the average
    outcomes of each alternative. This approach
    assumes that all outcomes for any alternative are
    equally likely.

17
Decision Making under Risk
  • Probabilistic decision situation
  • States of nature have probabilities of occurrence
  • Maximum Likelihood Criterion
  • Maximize Expected Monitary Value (Bayes Decision
    Rule)

18
Maximum Likelihood Criteria
  • Maximum Likelihood Identify most likely event,
    ignore others, and pick act with greatest payoff.
  • Personal decisions are often made that way.
  • Collectively, other events may be more likely.
  • Ignores lots of information.

19
Bayes Decision Rule
  • It is not a perfect criterion because it can lead
    to the less preferred choice.
  • Consider the Far-Fetched Lottery decision
  • Would you gamble?

20
The Far-Fetched Lottery Decision
  • Most people prefer not to gamble!
  • That violates the Bayes decision rule.
  • But the rule often indicates preferred choices
    even though it is not perfect.

21
Expected Monetary Value
N Number of states of nature k Number of
alternative decisions Xij Value of Payoff for
alternative i in state of nature j, i1,2,...,k
and j1,2,...,N. Pj Probability of state of
nature j
22
Example
23
Decision Making under Certainty
  • What if Getz knows the state of the nature with
    certainty?
  • Then there is no risk for the state of the
    nature!
  • A marketing research company requests 65000 for
    this information

24
Questions
  • Should Getz hire the firm to make this study?
  • How much does this information worth?
  • What is the value of perfect information?

25
Expected Value With Perfect Information (EVPI)
  • EVPI Expected Payoff - Maximum expected
    payoff
  • under Certainty (with no information)

Maximum expected payoffMax EMVi i1,..,k
  • EVPI places an upper bound on what one would pay
    for
  • additional information

26
Example Expected Value of Perfect Information
Favorable Market ()
Unfavorable Market ()
EMV
Construct a large plant
10,000
200,000
-180,000
Construct a small plant
40,000
100,000
-20,000
Do nothing
0
0
0
0.50
0.50
27
Expected Value of Perfect Information
  • EVPI
  • expected value - max(EMV)
  • under certainty
  • (200,0000.50 00.50)
  • - 40,000
  • 60,000
  • So Getz should not be willing to pay more than
    60,000

28
Ex Toy Manufacturer
  • How to choose among 4 types of tippi-toes?
  • Demand for tippi-toes is uncertain
  • Light demand 25,000 units (10)
  • Moderate demand 100,000 units (70)
  • Heavy demand 150,000 units (20)

29
Payoff Table
30
Maximum Expected Payoff Criteria
Maximum expected payoff occurs at Spring Action!
31
Opportunity Loss
  • Opportunity Loss of an act for a given event
  • Best Payoff - Payoff for the
  • for the event chosen act

32
Opportunity Loss Table
33
Expected Opportunity Loss
34
Similarly,
Minimum Expected Opportunity Loss occurs at
Spring Action!
35
Bayes Decision Rule
  • Maximize expected payoff criteria and
  • Minimize expected opportunity loss criteria
    always suggest the same decision!

36
Decision Trees
  • Graphical display of decision process, i.e.,
    alternatives, states of nature, probabilities,
    payoffs.
  • Decision tables are convenient for problems
  • with one set of alternatives and states of
    nature.
  • With several sets of alternatives and states of
    nature (sequential decisions), decision trees are
    used!
  • EMV criterion is the most commonly used criterion
    in decision tree analysis.

37
Softwares for Decision Tree Analysis
  • DPL
  • Tree Plan
  • Supertree
  • Analysis with less effort.
  • Full color presentations for managers

38
Steps of Decision Tree Analysis
  • Define the problem
  • Structure or draw the decision tree
  • Assign probabilities to the states of nature
  • Estimate payoffs for each possible combination of
    alternatives and states of nature
  • Solve the problem by computing expected monetary
    values for each state-of-nature node

39
Decision Tree
40
Ex1Getz Products Decision Tree
Payoffs 200,000 -180,000 100,000 -20,000 0
41
A More Complex Decision Tree
  • Lets say Getz Products has two sequential
    decisions to make
  • Conduct a survey for 10000?
  • Build a large or small plant or not build?

42
Ex1Getz Products Decision Tree
190,000 -190,000 90,000 -30,000 -10,000
49,200
190,000 -190,000 90,000 -30,000 -10,000
200,000 -180,000 100,000 -20,000 -0,000
43
Resulting Decision
  • EMV of conducting the survey49,200
  • EMV of not conducting the survey40,000
  • So Getz should conduct the survey!
  • If the survey results are favourable, build
    large plant.
  • If the survey results are infavourable, build
    small plant.

44
Ex2 Ponderosa Record Company
  • Decide whether or not to market the recordings of
    a rock group.
  • Alternative1 test market 5000 units and if
    favorable, market 45000 units nationally
  • Alternative2 Market 50000 units nationally
  • Outcome is a complete success (all are sold) or
    failure

45
Ex2 Ponderosa-costs, prices
  • Fixed payment to group 5000
  • Production cost 5000 and 0.75/cd
  • Handling, distribution 0.25/cd
  • Price of a cd 2/cd
  • Cost of producing 5,000 cds 5,0005,000(0.250.
    75)5,00015,000
  • Cost of producing 45,000 cds
  • 05,000(0.250.75)45,00050,000
  • Cost of producing 50,000 cds
  • 5,0005,000(0.250.75)50,00060,000

46
Ex2 Ponderosa-Event Probabilities
  • Without testing P(success)P(failure)0.5
  • With testing
  • P(successtest result is favorable)0.8
  • P(failuretest result is favorable)0.2
  • P(successtest result is unfavorable)0.2
  • P(failuretest result is unfavorable)0.8

47
Decision Tree for Ponderosa Record Company
48
Backward Approach
49
Optimal Decision Policy
  • Precision Tree provides excell add-ins.
  • Optimal decision is
  • Test market
  • If the market is favorable, market nationally
  • Else, abort
  • Risk Profile
  • Possible outcomes for the opt. soln.
  • 35,000 with probability 0.4
  • -55,000 with probability 0.1
  • -15,000 with probability 0.5

50
Risk Profilefor Ponderosa Record Co.
51
Sensitivity Analysis
  • The optimal solution depends on many factors. Is
    the optimal policy robust?
  • Question
  • -How does 1000 payoff change with respect to a
    change in
  • success probability (0.8 currently)?
  • earnings of success (90,000 currently)?
  • test marketing cost (15,000 currently)?

52
Application Areas of Decision Theory
  • Investments in
  • research and development
  • plant and equipment
  • new buildings and structures
  • Production and Inventory control
  • Aggregate Planning
  • Maintenance
  • Scheduling, etc.
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