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Chapter 8

Chapter 8. Decision Analysis. Decision Analysis. A method for determining optimal strategies when faced with several decision alternatives and an uncertain pattern of future events. The Decision Analysis Approach. Identify the decision alternatives - d i Identify possible future events - s j

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Chapter 8

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  1. Chapter 8 Decision Analysis MT 235

  2. Decision Analysis • A method for determining optimal strategies when faced with several decision alternatives and an uncertain pattern of future events. MT 235

  3. The Decision Analysis Approach • Identify the decision alternatives - di • Identify possible future events - sj • mutually exclusive - only one state can occur • exhaustive - one of the states must occur • Determine the payoff associated with each decision and each state of nature - Vij • Apply a decision criterion MT 235

  4. Types of Decision Making Situations • Decision making under certainty • state of nature is known • decision is to choose the alternative with the best payoff MT 235

  5. Types of Decision Making Situations • Decision making under uncertainty • The decision maker is unable or unwilling to estimate probabilities • Apply a common sense criterion MT 235

  6. Decision Making Under Uncertainty • Maximax Criterion (for profits) - optimistic • list maximum payoff for each alternative • choose alternative with the largest maximum payoff MT 235

  7. MT 235

  8. Decision Making Under Uncertainty • Maximin Criterion (for profits) - pessimistic • list minimum payoff for each alternative • choose alternative with the largest minimum payoff MT 235

  9. MT 235

  10. Decision Making Under Uncertainty • Minimax Regret Criterion • calculate the regret for each alternative and each state • list the maximum regret for each alternative • choose the alternative with the smallest maximum regret MT 235

  11. Decision Making Under Uncertainty • Minimax Regret Criterion • Regret - amount of loss due to making an incorrect decision - opportunity cost MT 235

  12. MT 235

  13. Types of Decision Making Situations • Decision making under risk • Expected Value Criterion • compute expected value for each decision alternative • select alternative with “best” expected value MT 235

  14. Computing Expected Value • Let: • P(sj)=probability of occurrence for state sj • and • N=the total number of states MT 235

  15. Computing Expected Value • Since the states are mutually exclusive and exhaustive MT 235

  16. Types of Decision Making Situations • Then the expected value of any decision di is MT 235

  17. MT 235

  18. Decision Trees • A graphical representation of a decision situation • Most useful for sequential decisions MT 235

  19. P(S1) = .3 $200K 2 Large $-20K P(S2) = .7 P(S1) = .3 $150K Medium 3 1 $20K P(S2) = .7 Small P(S1) = .3 $100K 4 $60K P(S2) = .7 MT 235

  20. EV2 = 46 P(S1) = .3 $200K 2 Large $-20K P(S2) = .7 EV3 = 59 P(S1) = .3 $150K Medium 1 3 $20K P(S2) = .7 Small EV4 = 72 P(S1) = .3 $100K 4 $60K P(S2) = .7 MT 235

  21. Decision Making Under Risk:Another Criterion • Expected Regret Criterion • Compute the regret table • Compute the expected regret for each alternative • Choose the alternative with the smallest expected regret • The expected regret criterion will always yield the same decision as the expected value criterion. MT 235

  22. Expected Regret Criterion • The expected regret for the preferred decision is equal to the Expected Value of Perfect Information - EVPI • EVPI is the expected value of knowing which state will occur. MT 235

  23. EVPI – Alternative to Expected Regret • EVPI – Expected Value of Perfect Information • EVwPI – Expected Value with Perfect Information about the States of Nature • EVwoPI – Expected Value without Perfect Information about the States of Nature • EVPI=|EVwPI-EVwoPI| MT 235

  24. Example 1: Mass. Bay Production (MBP) is planning a new manufacturing facility for a new product. MBP is considering three plant sizes, small, medium, and large. The demand for the product is not fully known, but MBP assumes two possibilities, 1. High demand, and 2. Low demand. The profits (payoffs) associated with each plant size and demand level is given in the table below. • Analyze this decision using the maximax (optimistic) approach. • Analyze this decision using the maximin (conservative) approach. • Analyze this decision using the minimax regret criterion.[1] • Now assume the decision makers have probability information about the states of nature. Assume that P(S1)=.3, and P(S2)=.7. Analyze the problem using the expected value criterion.[2] • How much would you be willing to pay in this example for perfect information about the actual demand level? (EVPI) • Compute the expected opportunity loss (EOL) for this problem. Compare EOL and EVPI. [1] D.W. Bunn discusses the regret criterion as follows. “The minimax regret criterion often has considerable appeal, particularly wherever decision makers tend to be evaluated with hindsight. Of course, hindsight is an exact science, and our actions are sometimes unfairly compared critically with what might have been done. Many organizations seem implicitly to review and reward their employees in this way.” Bunn, D. W., Applied Decision Analysis. [2] Note that that P(S1) and P(S2) are complements, so that that P(S1)+P(S2)=1.0. MT 235

  25. MT 235

  26. MT 235

  27. Bayes Law • In this equation, P(B) is called the prior probability of B and P(B|A) is called the posterior, or sometimes the revised probability of B. The idea here is that we have some initial estimate of P(B) , and then we get some additional information about whether A happens or not, and then we use Bayes Law to compute this revised probability of B. MT 235

  28. Now suppose that MBP has the option of doing market research to get a better estimate of the likely level of demand. Market Research Inc. (MRI) has done considerable research in this area and established a documented track record for forecasting demand. Their accuracy is stated in terms of probabilities, conditional probabilities, to be exact. Let Fbe the event: MRI forecasts high demand (i.e., MRI forecasts S1) Let Ube the event: MRI forecasts low demand (i.e., MRI forecasts S2) The conditional probabilities, which quantify MRI’s accuracy, would be: Suppose that This would say that 80% of the time when demand is high, MRI forecasts high demand. In addition, 75% of the time when the demand is low, MRI forecasts low demand. In the calculations, which follow, however, we will need to reverse these conditional probabilities. That is, we will need to know: MT 235

  29. Blank page for work MT 235

  30. Bayes Law can also be computed using a tabular approach as in the tables below. States of Nature Prior Probabilities Conditional Probabilities Joint Probabilities Posterior Probabilities Posterior Probabilities States of Nature Prior Probabilities Conditional Probabilities Joint Probabilities MT 235

  31. Now, using Bayes Law, we can construct a new decision tree, which will give us a decision strategy: Should we pay MRI for the market research? If we do not do the market research, what should our decision be? If we do the market research and get an indication of high demand, what should our decision be? If we get an indication of low demand, what should our decision be? We will use a decision tree as shown below to determine this strategy. MT 235

  32. $200K P(S1|U)= .103 $-20K P(S2|U)=.897 P(S1|U)= .103 $150K $20K P(S2|U)=.897 $100K P(S1|U)=.103 $60K P(S2|U)=.897 EV4= $107.16K $200K P(S1|F)= .578 4 Large $-20K P(S2|F)=.422 EV2= 107.16 EV5= $95.14K $150K P(S1|F)= .578 Medium 5 2 $20K Favorable Forecast P(S2|F)=.422 EV6= $83.12K $100K P(S1|F)= .578 Small 6 $60K P(F)= .415 P(S2|F)=.422 EV7= $2.66K 1 EV1= $81.98K Large 7 P(U)= .585 Unfavorable Forecast EV8= $33.39K Medium 8 3 Do Survey EV3= 64.12 EV9= $64.12K Small 9 Don’t do Survey $72K MT 235

  33. Expected Value of Sample Information – EVSI • EVSI – Expected Value of Sample Information • EVwSI – Expected Value with Sample Information about the States of Nature • EVwoSI – Expected Value without Sample Information about the States of Nature • EVSI=|EVwSI-EVwoSI| MT 235

  34. Efficiency of Sample Information – E • Perfect Information has an efficiency rating of 100%, the efficiency rating E for sample information is computed as follows: • Note: Low efficiency ratings for sample information might lead the decision maker to look for other types of information MT 235

  35. Example 2: The LaserLens Company (LLC) is considering introducing a new product, which to some extent will replace an existing product. LLC is unsure about whether to do this because the financial results depend upon the state of the economy. The payoff table below gives the profits in K$ for each decision and each economic state. • Analyze this decision using the maximax (optimistic) approach. • Analyze this decision using the maximin (conservative) approach. • Analyze this decision using the minimax regret criterion. • Now assume the decision makers have probability information about the states of nature. Assume that P(S1)=.4. Analyze the problem using the expected value criterion. • How much would you be willing to pay in this example for perfect information about the actual state of the economy? (EVPI) • Compute the expected opportunity loss (EOL) for this problem. Compare EOL and EVPI. MT 235

  36. Now suppose that LLC has the option of contracting with an economic forecasting firm to get a better estimate of the future state of the economy. Economics Research Inc. (ERI) is the forecasting firm being considered. After investigating ERI’s forecasting record, it is found that in the past, 64% of the time when the economy was strong, ERI predicted a strong economy. Also, 95% of the time when the economy was weak, ERI predicted a weak economy. States of Nature Prior Probabilities Conditional Probabilities Joint Probabilities Posterior Probabilities States of Nature Prior Probabilities Conditional Probabilities Joint Probabilities Posterior Probabilities MT 235

  37. 7a. Determine LLC’s best decision strategy. Should they hire ERI or go ahead without additional information? If they buy the economic forecast, what should their subsequent decision strategy be? 7b. Determine how much LLC should be willing to pay (maximum) to ERI for an economic forecast. 7c. What is the efficiency of the information provided by ERI? MT 235

  38. $140K P(S1|U)= .202 $-12K P(S2|U)=.798 P(S1|U)= .202 $25K $35K P(S2|U)=.798 EV4= $124.04K $140K P(S1|F)= .895 4 d1 $-12K P(S2|F)=.105 2 Favorable Forecast EV5= $26.05K P(S1|F)= .895 $25K d2 5 $35K P(F)= .286 P(S2|F)=.105 1 EV6= $18.70K EV1= $59.02 d1 6 P(U)= .714 Unfavorable Forecast 3 Hire ERI EV7= $32.98K d2 7 Don’t hire ERI $48.8K MT 235

  39. Decision Making with Cost Data Consider the following payoff table, which gives three decisions and their costs under each state of nature. The company’s objective is to minimize cost. 1. Apply the optimistic (minimin cost) criterion. 2. Apply the conservative (minimax cost) criterion. 3. Apply the minimax regret criterion. 4. Assume that P(S1)=.40 and P(S2)=.20 Apply the expected value criterion. 5. Compute EVPI. 6. Compute EOL. MT 235

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