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Chapter 12

Chapter 12. Value of Information. Chapter 12, Value of information. Learning Objectives: Probability and Perfect Information The Expected Value of Information Expected value of Imperfect Information Value of information in Complex Problems Value of information and Experts.

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Chapter 12

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  1. Chapter 12 • Value of Information

  2. Chapter 12, Value of information • Learning Objectives: • Probability and Perfect Information • The Expected Value of Information • Expected value of Imperfect Information • Value of information in Complex Problems • Value of information and Experts

  3. Chapter 12,Value of Information • Decision Maker often gather information to reduce uncertainty • Information gathering includes: • Consulting experts, conducting surveys • Performing mathematical or statistical analysis • Doing research, or simply reading books, journals, and newspapers.

  4. Value of Information • Value of Information: Some Basic Ideas • Probability and perfect information • Use conditional probabilities and Bayes’ theorem to evaluate information in any decision setting.

  5. Value of Information • The Expected Value of Information • By considering the expected value, we can decide whether: • An expert is worth consulting • Whether a test is worth performing • Or which of several information sources would be the best to consult.

  6. The Expected Value of Information • The worst possible case: • Regardless of the information we hear, we still would make the same choice that we would have made in the first place. • In this case, the information has zero expected value.

  7. The Expected Value of Information • Make a difference choice, then the expected value of the information must be positive • The expected value of information can be zero or positive, but never negative. • Different people in different situation may place different values on the same information

  8. Expected Value of Perfect Information • The optimal choice in any decision making situation is the one with the highest Expected Monetary Value (EMV) • How much would he be willing to pay for information that would help you to make the right decision?

  9. Expected Value of Perfect Information • To find the value of these information, find the EMV for each situation and then subtract them. • We can interpret this quantity as the maximum amount that the investor should be willing to pay for perfect information.

  10. Expected Value of Imperfect Information • We rarely have access to perfect information. • In fact, our information sources usually are subject to considerable error. • Thus, we must extend our analysis to deal with imperfect information. • We still consider the expected value of the information before obtaining it, and we will call it the (EVII).

  11. Value of Information in Complex Problems • In most of previous example there was only one uncertain event • Most real-world problems involves considerably more complex uncertainty models. • In complex situation we must consider two specific situation

  12. Value of Information in Complex Problems • First how to handle continuous probability distribution • Second, what happen when there are many uncertain events and information is available about some or all of them • Evaluate decision option with and without the information, and find the difference in the EMV

  13. Value of Information • Sensitivity Analysis, and Structuring • The first step is using a tornado diagram, those variables to which the decision was sensitive. • The second step, after constructing a probabilistic model, may be to perform sensitivity analysis on the probabilities.

  14. Value of Information • A third step in the structuring of a probabilistic model would be to calculate the EVPI for each uncertain event. • If EVPI is very low for an event, then there is little sense in spending a lot of effort in reducing the uncertainty by collecting information.

  15. Value of Information • But if EVPI for an event is relatively high, it may need to collecting of information • Such information can have a relatively large payoffs by reducing uncertainty • This information can also improving the decision maker’s EMV.

  16. Value of Information • Value of Information and Nonmonetary Objectives • In most cases the only objective that matters is making money • However in many decision situations there are multiple objectives. • For example, consider the FAA bomb-detection case again.

  17. Value of Information • FAA was interested in maximizing the detection effectiveness and passenger acceptance of the system • while at the same time minimizing the cost and time to implementation. • Minimizing cost happens to be one of the objectives.

  18. Value of Information • The answer would be to find the additional cost • Additional cost make the net expected value of getting the information equal to the expected value without the information • Trade-off always establish to value the information

  19. Value of Information • Suppose one objective is to minimize the decision maker’s time • Different choices and different outcomes require different amounts of time from the decision maker. • Information can be valued in terms of time;

  20. Value of Information • Value of Information and Expert • Expert information typically is somewhat interrelated and redundant. • The real challenge in expert use is to recruiting experts who look at the same problem from very different perspectives. • Use of expert from different field

  21. Value of Information • Summary • Make better decisions by considering the expected value of information • Both influence diagrams and decision trees can be used for calculating expected values • How to solve value-of-information problems in more complex situations

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