Download presentation
Presentation is loading. Please wait.
52
Decision Analysis Alternatives and States of Nature Good Decisions vs. Good Outcomes Payoff Matrix Decision Trees Utility Functions Decisions under Uncertainty Decisions under Risk
53
Decision Analysis - Payoff Tables
Case Problem - (A) p. 38
54
Decision Analysis - Payoff Tables
55
Decision Analysis - Payoff Tables
56
Decision Analysis - Payoff Tables
Decisions under Uncertainty
57
Decision Analysis - Payoff Tables
Decisions under Uncertainty
58
Decision Analysis - Payoff Tables
Decisions under Uncertainty
59
Decision Analysis - Payoff Tables
Decisions under Risk
60
Decision Analysis - Payoff Tables
Decisions under Risk
61
Decision Analysis - Payoff Tables
Decisions under Risk
62
Decision Analysis - Utility Theory
Utility theory provides a way to incorporate the decision maker’s attitudes and preferences toward risk and return in the decision analysis process so that the most desirable decision alternative is identified. A utility function translates each of the possible payoffs in a decision problem into a non-monetary measure known as a utility.
63
Decision Analysis - Utility Theory
risk averse 1.00 risk neutral 0.75 risk seeking 0.50 0.25 Payoff
64
Decision Analysis - Utility Theory
The utility of a payoff represents the total worth, value, or desirability of the outcome of a decision alternative to the decision maker. A risk averse decision maker assigns the largest relative utility to any payoff but has a diminishing marginal utility for increased payoffs.
65
Decision Analysis - Utility Theory
A risk seeking decision maker assigns the smallest utility to any payoff but has an increasing marginal utility for increased payoffs. A risk neutral decision maker falls in between these two extremes and has a constant marginal utility for increased payoffs.
66
Decision Analysis - Utility Theory Constructing Utility Functions
Step 1 - Assign a utility value of 0 to the worst outcome (W) in a decision problem and a utility value of 1 to the best outcome (B).
67
Decision Analysis - Utility Theory Constructing Utility Functions
Step 2 - For any other outcome x, find the probability p at which the decision maker is indifferent between the following two alternatives: Receive x with certainty or Receive B with probability p or W with probability 1-p The value of p is the utility that the decision maker assigns to the outcome x.
68
Decision Analysis - Utility Theory Constructing Utility Functions
For example, let’s compute the utility for the $450 entry that corresponds to alternative A and state of nature N=30. The problem consists on finding the value of p that makes the following two options equally attractive for the decision maker: Receive $450 with certainty Play a game in which the decision maker can make $5,800 with probability p or lose $2,360 with probability 1-p Let’s assume that the value of p that makes these two choices equally attractive to the decision maker is Then the utility that the decision maker assigns to the $450 is 0.7.
69
Decision Analysis - Utility Theory Constructing Utility Functions
70
Decision Analysis - Utility Theory Constructing Utility Functions
71
Decision Analysis - Utility Theory The Exponential Utility Function
A sensible value for R is the maximum value of Y for which the decision maker is willing to participate in a game of chance with the following possible outcomes: Win $Y with probability 0.5 Lose $Y/2 with probability 0.5
72
Decision Analysis - Utility Theory The Exponential Utility Function
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.