1 1 Slide © 2009 South-Western, a part of Cengage Learning Slides by John Loucks St. Edward’s University.

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1 1 Slide © 2009 South-Western, a part of Cengage Learning Slides by John Loucks St. Edward’s University

2 2 Slide © 2009 South-Western, a part of Cengage Learning Chapter 4 Decision Analysis n Problem Formulation n Decision Making without Probabilities n Decision Making with Probabilities n Risk Analysis and Sensitivity Analysis n Decision Analysis with Sample Information n Computing Branch Probabilities

3 3 Slide © 2009 South-Western, a part of Cengage Learning Decision Analysis n Decision analysis can be used to develop an optimal strategy when a decision maker is faced with several decision alternatives and an uncertain or risk-filled pattern of future events. n Even when a careful decision analysis has been conducted, the uncertain future events make the final consequence uncertain. n The risk associated with any decision alternative is a direct result of the uncertainty associated with the final consequence. A good decision analysis includes risk analysis that provides probability information about the favorable as well as the unfavorable consequences that may occur. A good decision analysis includes risk analysis that provides probability information about the favorable as well as the unfavorable consequences that may occur.

4 4 Slide © 2009 South-Western, a part of Cengage Learning Problem Formulation n A decision problem is characterized by decision alternatives, states of nature, and resulting payoffs. n The decision alternatives are the different possible strategies the decision maker can employ. n The states of nature refer to future events, not under the control of the decision maker, which may occur. States of nature should be defined so that they are mutually exclusive and collectively exhaustive.

5 5 Slide © 2009 South-Western, a part of Cengage Learning Pittsburgh Development Corporation (PDC) purchased land that will be the site of a new luxury condominium complex. PDC commissioned preliminary architectural drawings for three different projects: one with 30, one with 60, and one with 90 condominiums. Pittsburgh Development Corporation (PDC) purchased land that will be the site of a new luxury condominium complex. PDC commissioned preliminary architectural drawings for three different projects: one with 30, one with 60, and one with 90 condominiums. The financial success of the project depends upon the size of the condominium complex and the chance event concerning the demand for the condominiums. The statement of the PDC decision problem is to select the size of the new luxury condominium project that will lead to the largest profit given the uncertainty concerning the demand for the condominiums. The financial success of the project depends upon the size of the condominium complex and the chance event concerning the demand for the condominiums. The statement of the PDC decision problem is to select the size of the new luxury condominium project that will lead to the largest profit given the uncertainty concerning the demand for the condominiums. Example: Pittsburgh Development Corp.

6 6 Slide © 2009 South-Western, a part of Cengage Learning Influence Diagrams n An influence diagram is a graphical device showing the relationships among the decisions, the chance events, and the consequences. n Squares or rectangles depict decision nodes. n Circles or ovals depict chance nodes. n Diamonds depict consequence nodes. n Lines or arcs connecting the nodes show the direction of influence.

7 7 Slide © 2009 South-Western, a part of Cengage Learning ComplexSize Profit Demand for the Condominiums DecisionChanceConsequence Influence Diagrams

8 8 Slide © 2009 South-Western, a part of Cengage Learning Payoff Tables n The consequence resulting from a specific combination of a decision alternative and a state of nature is a payoff. n A table showing payoffs for all combinations of decision alternatives and states of nature is a payoff table. n Payoffs can be expressed in terms of profit, cost, time, distance or any other appropriate measure.

9 9 Slide © 2009 South-Western, a part of Cengage Learning Consider the following problem with three decision alternatives and two states of nature with the following payoff table representing profits: States of Nature States of Nature Strong Demand Weak Demand Strong Demand Weak Demand Decision Alternative s 1 s 2 Decision Alternative s 1 s 2 Small complex, d Small complex, d Medium complex, d Medium complex, d Large complex, d Large complex, d PAYOFF TABLE Example: Pittsburgh Development Corp.

10 Slide © 2009 South-Western, a part of Cengage Learning Decision Making without Probabilities n Three commonly used criteria for decision making when probability information regarding the likelihood of the states of nature is unavailable are: the optimistic approach the optimistic approach the conservative approach the conservative approach the minimax regret approach. the minimax regret approach.

11 Slide © 2009 South-Western, a part of Cengage Learning Optimistic Approach n The optimistic approach would be used by an optimistic decision maker. n The decision with the largest possible payoff is chosen. n If the payoff table was in terms of costs, the decision with the lowest cost would be chosen.

12 Slide © 2009 South-Western, a part of Cengage Learning Example: Optimistic Approach An optimistic decision maker would use the optimistic (maximax) approach. We choose the decision that has the largest single value in the payoff table. Maximum Maximum Decision Payoff Decision Payoff d 1 8 d 1 8 d 2 14 d 2 14 d 3 20 d 3 20 Maximaxpayoff Maximax decision

13 Slide © 2009 South-Western, a part of Cengage Learning Conservative Approach n The conservative approach would be used by a conservative decision maker. n For each decision the minimum payoff is listed and then the decision corresponding to the maximum of these minimum payoffs is selected. (Hence, the minimum possible payoff is maximized.) n If the payoff was in terms of costs, the maximum costs would be determined for each decision and then the decision corresponding to the minimum of these maximum costs is selected. (Hence, the maximum possible cost is minimized.)

14 Slide © 2009 South-Western, a part of Cengage Learning Example: Conservative Approach A conservative decision maker would use the conservative (maximin) approach. List the minimum payoff for each decision. Choose the decision with the maximum of these minimum payoffs. Minimum Minimum Decision Payoff Decision Payoff d 1 7 d 1 7 d 2 5 d 2 5 d 3 -9 d 3 -9 Maximindecision Maximinpayoff

15 Slide © 2009 South-Western, a part of Cengage Learning Minimax Regret Approach n The minimax regret approach requires the construction of a regret table or an opportunity loss table. n This is done by calculating for each state of nature the difference between each payoff and the largest payoff for that state of nature. n Then, using this regret table, the maximum regret for each possible decision is listed. n The decision chosen is the one corresponding to the minimum of the maximum regrets.

16 Slide © 2009 South-Western, a part of Cengage Learning For the minimax regret approach, first compute a regret table by subtracting each payoff in a column from the largest payoff in that column. In this example, in the first column subtract 8, 14, and 20 from 20; etc. The resulting regret table is: States of Nature States of Nature Strong Demand Weak Demand Strong Demand Weak Demand Decision Alternative s 1 s 2 Decision Alternative s 1 s 2 Small complex, d Small complex, d Medium complex, d Medium complex, d Large complex, d Large complex, d Example: Minimax Regret Approach REGRET TABLE

17 Slide © 2009 South-Western, a part of Cengage Learning For each decision list the maximum regret. Choose the decision with the minimum of these values. Maximum Maximum Decision Regret Decision Regret d 1 12 d 1 12 d 2 6 d 2 6 d 3 16 d 3 16 Example: Minimax Regret Approach Minimaxdecision Minimaxregret

18 Slide © 2009 South-Western, a part of Cengage Learning Decision Making with Probabilities n Expected Value Approach If probabilistic information regarding the states of nature is available, one may use the expected value (EV) approach. If probabilistic information regarding the states of nature is available, one may use the expected value (EV) approach. Here the expected return for each decision is calculated by summing the products of the payoff under each state of nature and the probability of the respective state of nature occurring. Here the expected return for each decision is calculated by summing the products of the payoff under each state of nature and the probability of the respective state of nature occurring. The decision yielding the best expected return is chosen. The decision yielding the best expected return is chosen.

19 Slide © 2009 South-Western, a part of Cengage Learning n The expected value of a decision alternative is the sum of weighted payoffs for the decision alternative. n The expected value (EV) of decision alternative d i is defined as: where: N = the number of states of nature P ( s j ) = the probability of state of nature s j P ( s j ) = the probability of state of nature s j V ij = the payoff corresponding to decision alternative d i and state of nature s j V ij = the payoff corresponding to decision alternative d i and state of nature s j Expected Value of a Decision Alternative

20 Slide © 2009 South-Western, a part of Cengage Learning Expected Value Approach Calculate the expected value for each decision. The decision tree on the next slide can assist in this calculation. Here d 1, d 2, and d 3 represent the decision alternatives of building a small, medium, and large complex, while s 1 and s 2 represent the states of nature of strong demand and weak demand.

21 Slide © 2009 South-Western, a part of Cengage Learning Decision Trees n A decision tree is a chronological representation of the decision problem. n Each decision tree has two types of nodes; round nodes correspond to the states of nature while square nodes correspond to the decision alternatives. n The branches leaving each round node represent the different states of nature while the branches leaving each square node represent the different decision alternatives. n At the end of each limb of a tree are the payoffs attained from the series of branches making up that limb.

22 Slide © 2009 South-Western, a part of Cengage Learning Decision Tree d1d1d1d1 d2d2d2d2 d3d3d3d3 s1s1s1s1 s1s1s1s1 s1s1s1s1 s2s2s2s2 s2s2s2s2 s2s2s2s2 Payoffs $8 mil $7 mil $14 mil $5 mil $20 mil -$9 mil

23 Slide © 2009 South-Western, a part of Cengage Learning Expected Value for Each Decision Choose the decision alternative with the largest EV. Build the large complex. 33 d1d1d1d1 d2d2d2d2 d3d3d3d3 EMV =.8(8 mil) +.2(7 mil) = $7.8 mil EMV =.8(14 mil) +.2(5 mil) = $12.2 mil EMV =.8(20 mil) +.2(-9 mil) = $14.2 mil Small Medium Large

24 Slide © 2009 South-Western, a part of Cengage Learning Expected Value of Perfect Information n Frequently information is available which can improve the probability estimates for the states of nature. n The expected value of perfect information (EVPI) is the increase in the expected profit that would result if one knew with certainty which state of nature would occur. n The EVPI provides an upper bound on the expected value of any sample or survey information.

25 Slide © 2009 South-Western, a part of Cengage Learning Expected Value of Perfect Information n EVPI Calculation Step 1: Step 1: Determine the optimal return corresponding to each state of nature. Determine the optimal return corresponding to each state of nature. Step 2: Step 2: Compute the expected value of these optimal returns. Compute the expected value of these optimal returns. Step 3: Step 3: Subtract the EV of the optimal decision from the amount determined in step (2). Subtract the EV of the optimal decision from the amount determined in step (2).

26 Slide © 2009 South-Western, a part of Cengage Learning n Expected Value with Perfect Information (EVwPI) n Expected Value without Perfect Information (EVwoPI) n Expected Value of Perfect Information (EVPI) Expected Value of Perfect Information EVwPI =.8(20 mil) +.2(7 mil) = $17.4 mil EVwoPI =.8(20 mil) +.2(-9 mil) = $14.2 mil EVPI = |EVwPI – EVwoPI| = |17.4 – 14.2| = $3.2 mil

27 Slide © 2009 South-Western, a part of Cengage Learning Risk Analysis n Risk analysis helps the decision maker recognize the difference between: the expected value of a decision alternative, and the expected value of a decision alternative, and the payoff that might actually occur the payoff that might actually occur n The risk profile for a decision alternative shows the possible payoffs for the decision alternative along with their associated probabilities.

28 Slide © 2009 South-Western, a part of Cengage Learning Risk Profile n Large Complex Decision Alternative Probability Profit ($ millions)

29 Slide © 2009 South-Western, a part of Cengage Learning Sensitivity Analysis n Sensitivity analysis can be used to determine how changes to the following inputs affect the recommended decision alternative: probabilities for the states of nature probabilities for the states of nature values of the payoffs values of the payoffs n If a small change in the value of one of the inputs causes a change in the recommended decision alternative, extra effort and care should be taken in estimating the input value.

30 Slide © 2009 South-Western, a part of Cengage Learning Decision Analysis with Sample Information n Frequently, decision makers have preliminary or prior probability assessments for the states of nature that are the best probability values available at that time. n To make the best possible decision, the decision maker may want to seek additional information about the states of nature. n This new information, often obtained through sampling, can be used to revise the prior probabilities so that the final decision is based on more accurate probabilities for the states of nature. n These revised probabilities are called posterior probabilities.

31 Slide © 2009 South-Western, a part of Cengage Learning Let us return to the PDC problem and assume that management is considering a 6-month market research study designed to learn more about potential market acceptance of the PDC condominium project. Management anticipates that the market research study will provide one of the following two results: Let us return to the PDC problem and assume that management is considering a 6-month market research study designed to learn more about potential market acceptance of the PDC condominium project. Management anticipates that the market research study will provide one of the following two results: Example: Pittsburgh Development Corp. 1. Favorable report: A significant number of the 1. Favorable report: A significant number of the individuals contacted express interest in individuals contacted express interest in purchasing a PDC condominium. purchasing a PDC condominium. 2. Unfavorable report: Very few of the individuals 2. Unfavorable report: Very few of the individuals contacted express interest in purchasing a PDC contacted express interest in purchasing a PDC condominium. condominium.

32 Slide © 2009 South-Western, a part of Cengage Learning Influence Diagram ComplexSize Profit Demand for the Condominiums MarketSurveyResults MarketSurvey DecisionChanceConsequence

33 Slide © 2009 South-Western, a part of Cengage Learning PDC has developed the following branch probabilities. If the market research study is undertaken: P (Favorable report) = P ( F ) =.77 P (Unfavorable report) = P (U) =.23 P (Unfavorable report) = P (U) =.23 If the market research report is favorable: P (Strong demand | favorable report) = P ( s 1 | F ) =.94 P (Strong demand | favorable report) = P ( s 1 | F ) =.94 P (Weak demand | favorable report) = P ( s 2 | F ) =.06 P (Weak demand | favorable report) = P ( s 2 | F ) =.06 Sample Information

34 Slide © 2009 South-Western, a part of Cengage Learning If the market research report is unfavorable: P (Strong demand | unfavorable report) = P ( s 1 | U ) =.35 P (Strong demand | unfavorable report) = P ( s 1 | U ) =.35 P (Weak demand | unfavorable report) = P ( s 2 | U ) =.65 If the market research study is not undertaken, the prior probabilities are applicable: P (Favorable report) = P ( F ) =.80 P (Unfavorable report) = P (U) =.20 P (Unfavorable report) = P (U) =.20 Sample Information

35 Slide © 2009 South-Western, a part of Cengage Learning Decision Tree U(.23) d1d1d1d1 d2d2d2d2 d3d3d3d3 F(.77) d1d1d1d1 d2d2d2d2 d3d3d3d d1d1d1d1 d2d2d2d2 d3d3d3d $ 8 mil $ 7 mil s1s1s1s1 s2s2s2s2 P ( s 1 ) =.94 P ( s 2 ) =.06 P ( s 1 ) =.94 P ( s 2 ) =.06 P ( s 1 ) =.94 P ( s 2 ) =.06 P ( s 1 ) =.35 P ( s 2 ) =.65 P ( s 1 ) =.35 P ( s 2 ) =.65 P ( s 1 ) =.35 P ( s 2 ) =.65 P ( s 1 ) =.80 P ( s 2 ) =.20 P ( s 1 ) =.80 P ( s 2 ) =.20 P ( s 1 ) =.80 P ( s 2 ) =.20 $14 mil $ 5 mil $20 mil -$ 9 mil $ 8 mil $ 7 mil $14 mil $ 5 mil $20 mil -$ 9 mil $ 8 mil $ 7 mil $14 mil $ 5 mil $20 mil -$ 9 mil s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 s1s1s1s1 s2s2s2s2 ConductMarketResearchStudy Do Not Conduct Market Research Study

36 Slide © 2009 South-Western, a part of Cengage Learning Decision Strategy n A decision strategy is a sequence of decisions and chance outcomes where the decisions chosen depend on the yet-to-be-determined outcomes of chance events. n The approach used to determine the optimal decision strategy is based on a backward pass through the decision tree using the following steps: At chance nodes, compute the expected value by multiplying the payoff at the end of each branch by the corresponding branch probabilities. At chance nodes, compute the expected value by multiplying the payoff at the end of each branch by the corresponding branch probabilities. At decision nodes, select the decision branch that leads to the best expected value. This expected value becomes the expected value at the decision node. At decision nodes, select the decision branch that leads to the best expected value. This expected value becomes the expected value at the decision node.

37 Slide © 2009 South-Western, a part of Cengage Learning Decision Tree U(.23) d1d1d1d1 d2d2d2d2 d3d3d3d3 EV =.35(8) +.65(7) = $7.35 mil EV =.35(14) +.65(5) = $8.15 mil EV =.35(20) +.65(-9) = $1.15 mil F(.77) d1d1d1d1 d2d2d2d2 d3d3d3d3 EV =.94(8) +.06(7) = $7.94 mil EV =.94(14) +.06(5) = $13.46 mil EV =.94(20) +.06(-9) = $18.26 mil EV = EV = $18.26 mil EV = EV = $8.15 mil EV = EV =$15.93 mil mil 11 d1d1d1d1 d2d2d2d2 d3d3d3d3 EV =.8(8) +.2(7) = $7.80 mil EV =.8(14) +.2(5) = $12.20 mil EV =.8(20) +.2(-9) = $14.20 mil EV = $14.20 mil EV = EV =$15.93 mil mil

38 Slide © 2009 South-Western, a part of Cengage Learning Decision Strategy n PDC’s optimal decision strategy is: Conduct the market research study. Conduct the market research study. If the market research report is favorable, construct the large condominium complex. If the market research report is favorable, construct the large condominium complex. If the market research report is unfavorable, construct the medium condominium complex. If the market research report is unfavorable, construct the medium condominium complex.

39 Slide © 2009 South-Western, a part of Cengage Learning Risk Profile n PDC’s Risk Profile Probability Profit ($ millions)

40 Slide © 2009 South-Western, a part of Cengage Learning Expected Value of Sample Information n The expected value of sample information (EVSI) is the additional expected profit possible through knowledge of the sample or survey information. n The expected value associated with the market research study is $ n The best expected value if the market research study is not undertaken is $ n We can conclude that the difference, $15.93  $14.20 = $1.73, is the expected value of sample information. n Conducting the market research study adds $1.73 million to the PDC expected value.

41 Slide © 2009 South-Western, a part of Cengage Learning Efficiency of Sample Information n Efficiency of sample information is the ratio of EVSI to EVPI. n As the EVPI provides an upper bound for the EVSI, efficiency is always a number between 0 and 1.

42 Slide © 2009 South-Western, a part of Cengage Learning Efficiency of Sample Information The efficiency of the survey: E = (EVSI/EVPI) X 100 E = (EVSI/EVPI) X 100 = [($1.73 mil)/($3.20 mil)] X 100 = [($1.73 mil)/($3.20 mil)] X 100 = 54.1% = 54.1% T he information from the market research study is 54.1% as efficient as perfect information.

43 Slide © 2009 South-Western, a part of Cengage Learning Computing Branch Probabilities Market Research State of Nature State of Nature Favorable, F Favorable, F Unfavorable, U Unfavorable, U Strong demand, s 1 P ( F | s 1 ) =.90 P ( F | s 1 ) =.90 P ( U | s 1 ) =.10 P ( U | s 1 ) =.10 Weak demand, s 2 P ( F | s 2 ) =.25 P ( F | s 2 ) =.25 P ( U | s 2 ) =.75 P ( U | s 2 ) =.75 n We will need conditional probabilities for all sample outcomes given all states of nature, that is, P ( F | s 1 ), P ( F | s 2 ), P ( U | s 1 ), and P ( U | s 2 ).

44 Slide © 2009 South-Western, a part of Cengage Learning Computing Branch Probabilities n Branch (Posterior) Probabilities Calculation Step 1: Step 1: For each state of nature, multiply the prior probability by its conditional probability for the indicator -- this gives the joint probabilities for the states and indicator. For each state of nature, multiply the prior probability by its conditional probability for the indicator -- this gives the joint probabilities for the states and indicator.

45 Slide © 2009 South-Western, a part of Cengage Learning Computing Branch Probabilities n Branch (Posterior) Probabilities Calculation Step 2: Step 2: Sum these joint probabilities over all states -- this gives the marginal probability for the indicator. Sum these joint probabilities over all states -- this gives the marginal probability for the indicator. Step 3: Step 3: For each state, divide its joint probability by the marginal probability for the indicator -- this gives the posterior probability distribution. For each state, divide its joint probability by the marginal probability for the indicator -- this gives the posterior probability distribution.

46 Slide © 2009 South-Western, a part of Cengage Learning Bayes’ Theorem and Posterior Probabilities n Knowledge of sample (survey) information can be used to revise the probability estimates for the states of nature. n Prior to obtaining this information, the probability estimates for the states of nature are called prior probabilities. n With knowledge of conditional probabilities for the outcomes or indicators of the sample or survey information, these prior probabilities can be revised by employing Bayes' Theorem. n The outcomes of this analysis are called posterior probabilities or branch probabilities for decision trees.

47 Slide © 2009 South-Western, a part of Cengage Learning Posterior Probabilities Favorable State of Prior Conditional Joint Posterior Nature Probability Probability Probability Probability s j P ( s j ) P ( F | s j ) P ( F  s j ) P ( s j | F ) s j P ( s j ) P ( F | s j ) P ( F  s j ) P ( s j | F ) s s s s P (favorable) = P ( F ) = P (favorable) = P ( F ) =

48 Slide © 2009 South-Western, a part of Cengage Learning Unfavorable State of Prior Conditional Joint Posterior Nature Probability Probability Probability Probability s j P ( s j ) P ( U | s j ) P ( U  s j ) P ( s j | U ) s j P ( s j ) P ( U | s j ) P ( U  s j ) P ( s j | U ) s s s s P (unfavorable) = P ( U ) = P (unfavorable) = P ( U ) = Posterior Probabilities

49 Slide © 2009 South-Western, a part of Cengage Learning End of Chapter 4