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Module 5 Part 2: Decision Theory

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1 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory BUS216 “Probability & Statistics for Business and Economics” Tidewater Community College Linda S. Williams, MBA, MSA Professor, Business Administration

2 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Decision-Making under Certainty Decision-Making under Uncertainty Decision-Making under Risk Goals: Maximize Returns Minimize Loss Minimize Regret Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

3 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Components of All Decisions: Decision Alternatives These are the options or choices open to any decision maker. Identification of possible alternatives is the starting point for all decision theory States of Nature These are any condition in “nature” that can occur after a decision has been made The conditions affect the outcome of the decision in either a positive, neutral or negative way The decision maker does not control the States of Nature Payoffs These are the rewards for any given decision alternative Payoffs can range in size and in some instances may be a loss Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

4 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Payoff Tables State of Nature (S1) (S2) (S3) (S4) Decision Alternative (d1) Payoff (P1,1) Payoff (P1,2) Payoff (P1,3) Payoff (P1,4) Decision Alternative (d2) Payoff (P2,1) Payoff (P2,2) Payoff (P2,3) Payoff (P2,4) Decision Alternative (d3) Payoff (P3,1) Payoff (P3,2) Payoff (P3,3) Payoff (P3,4) Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

5 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Decision Making Under Certainty State of Nature is known Select Decision Alternative with the highest payoff …. And this happens when ????? ALMOST NEVER! Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

6 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Decision Making Under Uncertainty The decision maker does not know which state of nature will occur The decision maker does not know the probability of the various states of nature occurring Approaches to decision making under uncertainty depend upon the criteria for the decision and the decision maker’s outlook Payoff Tables are used to determine possible payoffs under various states of nature Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

7 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Maximax Criterion Optimistic approach where decision maker bases action on the “best case” scenario” Isolate the highest payoff under each decision alternative Select the decision alternative that provides the highest payoff of the maximums Often called “best of the best” approach to decision making Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

8 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Maximin Criterion This is a pessimistic approach to decision making The assumption is that the “worst” will occur and so the decision is made to minimize the damage Determine the smallest payoff under each decision alternative Select the “best” of these worst case scenario payoffs We refer to this as “maximizing the minimum” return Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

9 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Hurwicz Criterion This is a “middle of the road” approach This criterion selects the maximum payoff and the minimum payoff for each decision alternative α =the optimism with a value between 0 and 1 with 1 being the MOST optimistic Multiply the maximum payoff by α Multiply the minimum payoff by 1 – α Sum the weighted products for each decision alternative Select the maximum weighted value and the corresponding decision alternative Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

10 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Minimax Regret Strategy Based on lost opportunity because the wrong decision was made and payoff was not maximized Transform the Decision Table into an Opportunity Loss Table in order to apply the Minimax Regret criterion Determine the highest payoff for each decision under the State of Nature Subtract the payoff for each decision alternative from the highest payoff. This is the “regret” Replace the payoffs with the “regret” or opportunity losses creates the opportunity loss table Then determine the maximum regret for each decision alternative and select the smallest regret available Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

11 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Decision Making Under Risk The decision maker does not know which state of nature will occur The decision maker knows the probability of the various states of nature occurring Payoff Tables are used to determine possible payoffs under various states of nature Decisions are made based on the long-run average return for a decision, based on the probability of the various states of nature Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

12 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Expected Monetary Value (EMV) Each payoff under each state of nature is now associated with a probability Find the EMV of each Decision Alternative: (Payoff) X (Probability of that State of Nature) Sum the products across the States of Nature to arrive at the EMV of each alternative Select the decision alternative with the highest EMV The strategy of EMV is that it maximizes the return over the “long run” It does not guarantee this return on a single investment Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

13 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Expected Value of Perfect Information (EVPI) The EVPI is the value that a decision maker places on knowing which state of nature will occur It is always presumed that the information is available It is always presumed that the information is accurate As long as the EVPI does not exceed the EMV, the decision maker will pay for the information EVPI = EMV with Perfect Information – EMV without Information Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

14 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Expected Value of Perfect Information (EVPI) What is the value of knowing which state of nature will occur? This is the difference between the payoff that would occur if the decision maker knew which state of nature would occur and the expected monetary payoff from the best alternative when there is no information available EVPI = Expected Monetary Payoff with Perfect Information – Expected Monetary Payoff without Information Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.

15 Module 5 Part 2: Decision Theory
BUS216 Module 5 Part 2: Decision Theory Expected Value of Perfect Information (EVPI) Expected Monetary Value without information = highest payoff considering the probability of each State of Nature Perfect Information: Highest Payoff under each State of Nature weighted by the probability of that State of Nature The difference between these two is the EVPI Content created by Linda Williams of Tidewater Community College for Z Degree Project, originally published at learn.vccs.edu under a CC BY-NC-SA license.


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