1 / 41

Chapter 3 Fundamentals of Decision Theory Models

Chapter 3 Fundamentals of Decision Theory Models. Learning Objectives. Students will be able to: List the steps of the decision-making process Describe the types of decision-making environments Use probability values to make decisions under risk

terentia
Download Presentation

Chapter 3 Fundamentals of Decision Theory Models

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 3 Fundamentals of Decision Theory Models 3-1

  2. Learning Objectives Students will be able to: • List the steps of the decision-making process • Describe the types of decision-making environments • Use probability values to make decisions under risk • Make decisions under uncertainty, where there is risk but probability values are not known • Use computers to solve basic decision-making problems 3-2

  3. Chapter Outline 3.1 Introduction 3.2 The Six Steps in Decision Theory 3.3 Types of Decision-Making Environments 3.4 Decision Making Under Risk 3.5 Decision Making Under Uncertainty 3.6 Marginal Analysis with a Large Number of Alternatives and States of Nature 3-3

  4. Introduction • Decision theory is an analytical and systematic way to tackle problems • A good decision is based on logic. 3-4

  5. The Six Steps in Decision Theory • Clearly define the problem at hand • List the possible alternatives • Identify the possible outcomes • List the payoff or profit of each combination of alternatives and outcomes • Select one of the mathematical decision theory models • Apply the model and make your decision 3-5

  6. Decision Table for Thompson Lumber 3-6

  7. Types of Decision-Making Environments • Type 1: Decision-making under certainty • decision-maker knows with certainty the consequences of every alternative or decision choice • Type 2: Decision-making under risk • The decision-maker does know the probabilities of the various outcomes • Decision-making under uncertainty • The decision-maker does not know the probabilities of the various outcomes 3-7

  8. Tile Replacement on the Space Shuttle 3-8

  9. Critical Decisions in a Nuclear World 3-9

  10. Decision-Making Under Risk Expected Monetary Value 3-10

  11. Decision Table for Thompson Lumber 3-11

  12. Expected Value of Perfect Information (EVPI) • EVPI places an upper bound on what one would pay for additional information • EVPI is the expected value with perfect information minus the maximum EMV 3-12

  13. Expected Value With Perfect Information (EV | PI) 3-13

  14. Expected Value of Perfect Information • EVPI = EV|PI - maximum EMV 3-14

  15. Expected Value of Perfect Information 3-15

  16. Expected Value of Perfect Information EVPI = expected value with perfect information - max(EMV) = $200,000*0.50 + 0*0.50 - $40,000 = $60,000 3-16

  17. Expected Opportunity Loss • EOL is the cost of not picking the best solution • EOL = Expected Regret 3-17

  18. Computing EOL - The Opportunity Loss Table 3-18

  19. The Opportunity Loss Table continued 3-19

  20. The Opportunity Loss Table - continued 3-20

  21. Sensitivity Analysis EMV(Large Plant) = $200,000P - (1-P)$180,000 EMV(Small Plant) = $100,000P - $20,000(1-P) EMV(Do Nothing) = $0P + 0(1-P) 3-21

  22. Sensitivity Analysis - continued 250000 200000 Point 1 Point 2 150000 Small Plant 100000 50000 EMV Values 0 -50000 0 0.2 0.4 0.6 0.8 1 -100000 Large Plant EMV -150000 -200000 Values of P 3-22

  23. Decision Making Under Uncertainty • Maximax • Maximin • Equally likely (Laplace) • Criterion of Realism • Minimax 3-23

  24. Decision Making Under Uncertainty Maximax - Choose the alternative with the maximum output 3-24

  25. Decision Making Under Uncertainty Maximin - Choose the alternative with the maximum minimum output 3-25

  26. Decision Making Under Uncertainty Equally likely (Laplace) - Assume all states of nature to be equally likely, choose maximum Average 3-26

  27. Decision Making Under Uncertainty Criterion of Realism (Hurwicz): CR = *(row max) + (1-)*(row min) 3-27

  28. Decision Making Under Uncertainty Minimax - choose the alternative with the minimum maximum Opportunity Loss 3-28

  29. Marginal Analysis • P= probability that demand is greater that or equal to a given supply • 1-P = probability that demand will be less than supply • MP = marginal profit • ML = marginal loss • Optimal decision rule is: P*MP  (1-P)*ML • or 3-29

  30. Marginal Analysis -Discrete Distributions Steps using Discrete Distributions: • Determine the value forP • Construct a probability table and add a cumulative probability column • Keep ordering inventory as long as the probability of selling at least one additional unit is greater than P 3-30

  31. Café du Donut Example 3-31

  32. Café du Donut Example continued Marginal profit = selling price - cost = $6 - $4 = $2 Marginal loss = cost Therefore: 3-32

  33. Café du Donut Example continued Daily Sales Probability of Probability that Sales (Cartons) Sales at this Level Will Be at this Level or Greater ³ 4 0.05 1.00 0.66 ³ 5 0.15 0.95 0.66 ³ 6 0.15 0. 80 0.66 7 0.20 0.65 8 0.25 0.45 9 0.10 0.20 10 0.10 0.10 1.00 3-33

  34. Marginal AnalysisNormal Distribution • = average or mean sales • = standard deviation of sales • MP = marginal profit • ML = Marginal loss 3-34

  35. Marginal Analysis -Discrete Distributions ML = P + ML MP * - m X = Z s • Steps using Normal Distributions: • Determine the value forP. • Locate P on the normal distribution. For a given area under the curve, we find Zfrom thestandard Normal table. • Using we can now solve for X* 3-35

  36. Joe’s Newsstand Example A • ML = 4 • MP = 6 • = Average demand = 50 papers per day •  = Standard deviation of demand = 10 3-36

  37. Joe’s Newsstand Example A - continued Step 1: Step 2: Look in the Normal table for P = 0.6 (i.e., 1 – 0.4) . 3-37

  38. Joe’s Newsstand Example A continued 3-38

  39. Joe’s Newsstand Example B • ML = 8 • MP = 2 •  = Average demand = 100 papers per day •  = Standard deviation of demand = 10 3-39

  40. Joe’s Newsstand Example B - continued • Step 1: • Step 2: Z = -0.84 for an areaof 0.80 and or: 3-40

  41. Joe’s Newsstand Example B continued 3-41

More Related