Title: CRP 834: Decision Analysis
1CRP 834 Decision Analysis
2Review
- Statistical decision theory
- Decision Theory Framework
- A set of strategies
- A set of possible futures (state of natures)
- Umbrella Example
3 Generalized Form of a Payoff Matrix
N1 N2 .. Nj .. Nm
S1 P11k P12k .. P1jk .. P1mk
S2 P21k P22k .. P2jk .. P2mk
.. ..
.. ..
Si Pilk Pi2k .. Pijk .. Pimk
.. ..
.. ..
Sn Pnlk Pn2k .. Pnjk .. Pnmk
Mk
Si possible strategy Nj possible future
States of Nature (the uncontrolled occurrence
of a state of nature Nj after selecting strategy
Si ) Pijk the value of payoff-type k for
strategy i and state of nature j, payoffs. Mk
payoff matrix
4- More Decision Rules
- The Maximin criterion
- The Maximax criterion
- The Hurwicz criterion
- The Bayes (Laplace) Criterion
- The Minimax regret criterion
- Mixed strategy
5Experimentation and Sequential Decision Analysis
- Analysis of no-experiment alternatives
- Decision-flow diagram (Decision Tree)
6Analysis of the No-Experiment Alternatives
- Statement of the problem
- 1000 urns parted in 2 categories
- (800) q1 urn contains 4 red balls 6 black
ones - (200) q2 urn contains 9 red balls 1 black
ones - Three possible strategies
- A1 guess the urn is of type q1
- A2 guess the urn is of type q2
- A3 refuse to play
- The payoffs are as follows
7Expected Monetary Value (EMV)
- As the probability of q1 is 0.8, and that of q2
0.2, we have the payoff for - A1 0.8 (40.0) 0.2 (-20) 28
- A2 0.8 (-5.0) 0.2 (100) 16
- A3 0.8 ( 0.0) 0.2 (-0.0) 0
8Decision-Flow Diagram
- Allow the following experimental options before
making the decision - no observation at cost 0.00
- L1 a single observation at cost 8.00
- (you can draw a single ball at random from
the unidentified urn on the table) - L2 a pair of observation at cost 12.00
- L3 a single observation at cost 9.00 with the
privilege of another observation at 4.50.
9(No Transcript)
10L0 Path (Decision Tree Branch 0)
11L1 Path (Decision Tree Branch 1)
12L2 Path (Decision Tree Branch 2)
13L3 Path (Decision Tree Branch 3)
14L3 Path continued
15Review of Probability
- Joint probability
- Bayes Formula
16Review of Probabilityexample
q1 q2
R 0.32 0.18 0.5
B 0.48 0.02 0.5
0.8 0.2 1
17Probability Assignment
Case 2
18Averaging Out-Folding Back L0 Path
19Averaging out-Folding Back -- L1 Path
20Averaging out-Folding Back L2 Path
21Averaging out-Folding Back L3 Path
22Averaging out-Folding Back L3 Path continued
23- What is your decision
- Make experiment or not Make experiment?
- If make experiment, which option?
- Having decided to take an experiment option, what
action you will take according to the experiment
result? - What is the benefit of information?