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Chapter 5: Decision-making Concepts. Quantitative Decision Making with Spreadsheet Applications 7 th ed. By Lapin and Whisler Sec 5.5 : Other Decision Criteria Sec 5.6: Opportunity Loss and the Expected Value of Perfect Information. The Maximin Payoff Criterion.
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Chapter 5: Decision-making Concepts Quantitative Decision Making with Spreadsheet Applications 7th ed. By Lapin and Whisler Sec 5.5 : Other Decision Criteria Sec 5.6: Opportunity Loss and the Expected Value of Perfect Information
The Maximin Payoff Criterion • The maximin payoff criterion is a procedure that guarantees that the decision maker can do no worse than achieve the best of the poorest outcomes.
Example • Goal: Ensure a favorable outcome no matter what happens. • Determine the worst outcome for each act regardless of the event.
Example • Choose an act with the largest lowest payoff. This guarantees a minimum return that is the best of the poorest outcomes possible. • Gears and Levers will guarantee the toy manufacturer a payoff of at least $25,000. • Gears and Levers is the maximin payoff act.
Deficiencies of Maximin Payoff Criterion • It is an extremely conservative decision criterion and may lead to some bad decisions. • It is primarily suited to decision problems with unknown probabilities that cannot be reasonably assessed.
The Maximum Likelihood Criterion • The maximum likelihood criterion focuses on the most likely event to the exclusion of all others.
Maximum Likelihood Criterion • Ignores most of other possible outcomes. • Prevalent decision-making behavior.
The Criterion of Insufficient Reason • Used when decision maker has no information about the event probabilities. • Assumes each event has a probability of 1/(number of events) of occuring. • Some knowledge of the probability of an event is almost always available.
The Bayes Decision Rule • The Bayes decision rule chooses the act maximizing expected payoff. • It makes the greatest use of all available information. • Its major deficiency occurs when alternatives involve different magnitudes of risk.
Opportunity Loss • Opportunity loss is the amount of payoff that is forgone by not selecting the act that has the greatest payoff for the event that actually occurs. • To calculate opportunity losses the maximum payoff for each row is determined and it’s then subtracted from its respective row maximum.
The Bayes Decision Rule and Opportunity Loss • The Bayes decision rule is to select the act that has the maximum expected payoff or the minimum expected opportunity loss.
The Expected Value of Perfect Information • When the decision maker can acquire perfect information the decision will be made under certainty. Then the decision maker can guarantee the best decision. • We want to investigate the worth of such information before it is obtained, so we will determine the expected payoff once perfect information is obtained. • This quantity is called the expected payoff under certainty.
Calculating Expected Payoff Under Certainty • Determine the highest payoff for each event. • Multiply the maximum payoffs with their respective event probabilities. Then sum these amounts. • Determine the worth of perfect information to the decision maker.
Expected Value of Perfect Information (EVPI) • EVPI = Expected payoff under certainty - Maximum expected payoff. • Our example: • EVPI = $460,500-$455,000 = $5,500. • This is the greatest amount of money the decision maker would be willing to pay to obtain perfect information about what demand will be.