Decision Theory Part 2
This homework is harder and longer, but it will finish up Chapter 4. For the final, you will have to be able to do a probability tree for Bayes’ rule as you in problem 1, and you will have to be able to evaluate (or ‘prune’) a large decision tree that will be given to you as in problem 2, and you will have to be able to draw from scratch a small decision tree as in the start of problem 3. You will NOT have to do an entire tree from scratch, including Bayes’ rule for the final. So if your time is tight for this assignment, concentrate on the first 3 problems.
Bayes’ Rule Review
Part of the challenge of running a retail business is forecasting what demand for an item will be in the future, so that it can be ordered and produced now for that future demand. Stella runs a small local chain of appliance stores in an area that has been devastated by fires. For the last several years stainless steel has been the most popular finish for kitchen appliances. However, it appears that dark colors (e.g., black stainless steel) are now becoming more fashionable. Stella needs to order appliances now in order to satisfy the demand coming up in the next few months for contractors rebuilding homes devastated by the fire, as well as her usual demographic of couples wanting to remodel their kitchen. She decides to have a mix of stainless steel and black stainless steel, with other colors special ordered since they are asked for so rarely. She can either go with the current trend and order a majority of stainless steel products (D1), or she can order a majority of black stainless steel appliances, hoping that the new trend for sleeker, more modern colors takes hold. She figures out the profit she can make from each decision, depending on whether the demand is higher for the traditional stainless steel (S1), or higher for the newer, black stainless steel finishes (S2)
The payoff table Stella came up with is below:
S1 | S2 | |
D1 | 300 | 100 |
D2 | 50 | 250 |
Stella decided that there was a 70% chance that stainless steel would still remain more popular than its darker counterparts.
However, after some consideration, Stella realized that stainless steel has been the most popular option since she has owned her stores. While many of those who were burned out were older and would likely replace their appliances with a more traditional look, she is wondering if those who want to sell, might be selling to younger couples who might want a more modern, sleek look. She decides to consider hiring a marketing research firm to help her make her decision, since this was likely to be a big year for her. After due consideration and struggling with her long-unused QBA skills with Bayes’ Rule, she came up with the following large decision tree:
Figure out Stella’s optimal decision strategy etc. by calculating the following (5 pts each subpart. Make sure to show your work and give explanations for decisions to get full credit. OK to show work on tree- just indicate that’s where the work is below.):
A machine shop owner is attempting to decide whether ot purchase a new drill press, a lathe, or a grinder. The return from each will be determined by whether the company succeeds in getting a government military contract. The profit or loss from each purchase and probabilities associated with each contract outcome are shown in the following payoff table.
Note: Probability of getting a contract is 0.40
Purchase | Contract | No Contract |
Drill press | $40,000 | -$8,000 |
Lathe | $20,000 | $4,000 |
Grinder | $12,000 | $10,000 |
The above parts should reflect what I did in class for the small decision tree on Monday.
The machine shop owner is considering hiring a consultant with ties to the military to ascertain whether or not the shop will get the contract. The consultant is a former military officer who uses personal contacts in the military to find out such information. After talking to other shop owners who have hired this consultant, the owner has found he has a probability of .7 of getting a favorable report from the consultant, given that the contract is awarded to the shop, and a probability of .8 of getting an unfavorable report, given that the contract is not awarded.
P(A|F) or P(F|A)?
P(N|U) or P(U|N)?
What are the values for the conditional probabilities you were given ?(give that with P(X|Y) = 0.xx, not just the number 0.xx)