Decision making using probability



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Chapter 6 Decision making using probability In this chapter, we look at how we can use probability in order to aid decision making. 6.1 Expected Monetary Value Intuition should now help to explain how probability can be used to aid the decision making process. For example, suppose we re considering launching a new product on the market. We conduct a pre launch questionnaire and 86 out of the 100 questionnaire respondents say that they would buy our product if it was on the market. We might translate this into the following probability statement: P(product successful) = 86 100 = 0.86, which is quite good, and so surely we should launch the product? It looks promising! But... we should also consider the financial outcome of our situation. For example, if the product is successful, we might make a reasonable profit, but if the product is not successful, we could stand to lose a lot more than we would gain under success (set up costs, advertising, production costs etc), and such financial considerations could outweigh the high probability of success alone. So, in real life scenarios, not only do we use probability to aid the decision making process, but we also take into account the financial implications of our decisions. This is achieved by weighting the probability of different outcomes by their value, which is often financial. The Expected Monetary Value (EMV ) of a single event is simply the probability of that event multiplied by the monetary value of that outcome. Example 1 If you would win 5 if you pulled an ace from a pack of cards, theemv would be EMV(Ace) = P(Ace) MonetaryValue(Ace) = 4 5 = 0.38. 52 In other words, if you repeated this bet a large number of times, overall you would come out, on average, 38 pence better off per bet. Therefore you would want to pay no more than 38p for such a bet. 66

CHAPTER 6. DECISION MAKING USING PROBABILITY 67 Example 2 Consider another bet. When rolling a die, if it s a six you have to pay 5 but if it s any other number you receive 2.50. Would you take on this bet? Therefore Probability Financial outcome P(6) = 1/6 5 P(Not a6) = 5/6 2.50 EMV(Six) = 1 5.00 = 0.833 6 EMV(Not a Six) = 5 2.50 = 2.0833 6 and hence the expected monetary value of the bet is EMV(Bet) = 0.833+2.083 = 1.25. Therefore, in the long run, this would be a bet to take on as it has a positive expected monetary value. Example 3: The National Lottery In a recent lotto draw, the prizes were TheEMV of the bet is Number of balls matched Probability Prize 6 0.000000071 4,894,097 5 plus bonus ball 0.000000429 390,643 5 0.000018449 2,226 4 0.000968619 164 3 0.0177 25 < 3 0.9814 0 EMV = P(match 6 balls) Prize(match 6 balls) +P(match 5 balls plus bonus) Prize(match 5 balls plus bonus) +P(match 5 balls) Prize(match 5 balls) +P(match 4 balls) Prize(match 4) +P(match 3 balls) Prize(match 3 balls) +P(match < 3 balls) Prize(match < 3 balls) = 0.000000071 4,894,097+ +0.0177 25+0.9814 0. = 1.158. Therefore, a fair price for a ticket in this particular lottery is around 1.16. The difference between this and the standard 2 charge for a ticket goes towards the million pound raffle, good

CHAPTER 6. DECISION MAKING USING PROBABILITY 68 causes, of course, Camelot s profits. In general, the expected monetary value of a project (or bet) is given by the formula EMV = P(Event) Monetary value of Event where the sum is over all possible events that make up the project. The EMV of a project can be used as a decision criterion for choosing between different projects and has applications in a large number of situations. This is illustrated by the following example. Example 4 Synaptec is a small technology company with a new and innovative product that they wish to launch on to the market. It could go for a direct approach, launching onto the whole of the domestic market through traditional distribution channels, or it could launch only on the internet. A third option exists where the product is licensed to a larger company through the payment of a licence fee irrespective of the success of the product. How should the company launch the product? The company has done some initial market research and the managing director, Jack Holmes, believes the demand for the product can be classed into three categories: high, medium or low. Jack thinks that these categories will occur with probabilities 0.2, 0.35 and 0.45 respectively and his thoughts on the likely profits (in K) to be earned in each plan are High Medium Low Direct 100 55-25 Internet 46 25 15 Licence 20 20 20 TheEMV of each plan can be calculated as follows: EMV(Direct) = 0.2 100+0.35 55+0.45 ( 25) = 28K EMV(Internet) = 0.2 46+0.35 25+0.45 15 = 24.7K EMV(Licence) = 0.2 20+0.35 20+0.45 20 = 20K. On the basis of expected monetary value, the best choice is the Direct approach as this maximises his EMV.

CHAPTER 6. DECISION MAKING USING PROBABILITY 69 6.2 Decision trees In the last example we had to make a decision. When we include a decision in a tree diagram (see Chapter 5) we use a rectangular node, called a decision node to represent the decision. The diagram is then called a decision tree. There are no probabilities at a decision node but we evaluate the expected monetary values of the options. In a decision tree the first node is always a decision node. There may also be other decision nodes. If there is another decision node then we evaluate the options there and choose the best one, and the expected value of this option becomes the expected value of the branch leading to the decision node. The decision tree for the last example (Example 4) would look like this: 100 H 0.2 L M 0.35 55 Direct 0.45-25 +28 0.2 40 H Internet M 0.35 25 +24.7 L 0.45 15 Licence +20 0.2 20 H M 0.35 20 L 0.45 20

CHAPTER 6. DECISION MAKING USING PROBABILITY 70 Now consider a more complicated example. Example 5 Charlotte Watson, the manager of a small sales company, has the opportunity to buy a fixed quantity of a new type of Android tablet computer which she can then offer for sale to clients. The decision to buy the product and offer it for sale would involve a fixed cost of 200,000. The number of tablets that will be sold is uncertain, but Charlotte s prior beliefs are expressed as follows. Sales will be poor with probability 0.2; this will result in an income of 100,000. Sales will be moderate with probability 0.5; this will result in an income of 220,000. Sales will be good with probability 0.3; this will result in an income of 350,000. For an additional fixed cost of 30,000, market research can be conducted to aid the decision making process. The outcome of the market research can be either positive or negative, with probabilities 0.58 and 0.42, respectively. Knowing the outcome of the market research changes the probabilities for the main sales project as follows: Main sales probabilities Market research Poor Moderate Good Positive 0.15 0.45 0.4 Negative 0.6 0.35 0.05 Charlotte will make decisions based on expected monetary value. (a) Draw a decision tree for this problem. (b) Use expected monetary value to determine the optimal course of action for Charlotte.

CHAPTER 6. DECISION MAKING USING PROBABILITY 71 This page is left blank for your solution to the last question

CHAPTER 6. DECISION MAKING USING PROBABILITY 72 6.3 Exercises 1. Picoplex Technologies have developed a new manufacturing process which they believe will revolutionise the smartphone industry. They are, however, uncertain how they should go about exploiting this advance. Initial indications of the likely success of marketing the process are 55%, 30%, 15% for high success, medium success and probable failure, respectively. The company has three options; they can go ahead and develop the technology themselves, licence it or sell the rights to it. The financial outcomes (in millions) for each option are given in the table below. high success medium success failure Develop 80 40 100 Licence 40 30 0 Sell 25 25 25 (a) Draw a decision tree to represent the company s problem. (b) Calculate the Expected Monetary Value for all possible decisions the company may take and hence determine the optimal decision for the company. 2. The owner of a small business has the right to have a retail stall at a large festival to be held during the summer. She judges that this would either be a success or a failure and that the probability that it is a success is 0.4. If the stall was a success, the net income from it would be 90,000. If the stall was a failure, there would be a net loss of 30,000 from it. To help to make the decision, the owner could pay for market research. This would cost 5,000. The market research will either give a positive indication or a negative indication. The conditional probability that it gives a positive indication, given that the stall will actually be a success, is 0.75. The conditional probability that it gives a positive indication, given that the stall will actually be a failure, is 1/3. The owner has various options: Do nothing. Go ahead without market research. Pay for the market research. Sell her right to a stall for 10,000. If she pays for the market research then, depending on the outcome, she can: Do nothing more. Go ahead. Sell her right to a stall. If the market research gave a positive indication the price would be 35,000. If the market research gave a negative indication the price would be only 3,000.

CHAPTER 6. DECISION MAKING USING PROBABILITY 73 What should she do? This is a fairly complicated question so it is best to tackle it in stages. (a) Using a probability tree for the success or failure of the stall and the market research outcome, find the following probabilities. (i) The probability of a positive market research outcome. (ii) The probability of a negative market research outcome. (iii) The conditional probability of a successful stall given a positive market research outcome. (iv) The conditional probability of a failure given a positive market research outcome. (v) The conditional probability of a successful stall given a negative market research outcome. (vi) The conditional probability of a failure given a negative market research outcome. (b) Represent the owner s decision problem using a tree diagram. (c) Suppose that the owner has the market research done and that the outcome is positive. Evaluate the expected monetary values, under these circumstances, of the three options: Sell. Go ahead. Do nothing more. and hence find what she should do if these circumstances arise. (d) Suppose that the owner has the market research done and that the outcome is negative. Evaluate the expected monetary values, under these circumstances, of the three options: Sell. Go ahead. Do nothing more. and hence find what she should do if these circumstances arise. (e) Hence find the expected monetary value of the initial option of Pay for the market research. (f) Find the expected monetary values of the three other initial options: Do nothing. Go ahead without market research. Sell her right to a stall for 10,000. (g) Determine the owner s best strategy.