Value of Information¶
Decision to collect information is a decision to insert flexibility into development strategy, as the logic behind “test” is so that you may change you decision once you have test results.
Value of information = Value of this flexibility
Information Gathering¶
Inserting an test stage before decision problems as possible choice reduces uncertainty before commitment to a system design/roll-out
flowchart LR
D --> dp1[Decision Problem] & Test
Test --> dp2[Decision Problem]
Tests¶
Any decision problem has initial uncertainties = “prior probabilities”, such as those concerning
- Cost of production
- Likelihood of sales
Tests help get information on these issues, for eg
- Running a test plant
- Carrying out market analysis
flowchart LR
pp[Prior Probabilities] -->|Test| ni[New Information] -->|Revise| pp --> new[New Expected Values for decision]
Consequence¶
EV after test \(\ge\) EV without test
EVSI¶
Expected value of Sample information
Helps understand if test is significantly worth it? $$ \begin{aligned} \text{Expected value of Info} &= EV_\text{after test} - EV_\text{without test} \ &= \sum p_k \cdot \text{EV}(D_k^) - \text{EV}(D^) \end{aligned} $$
- \(D^*\) is the current best design
- \(D_k^*\) is the best design of test \(k\)
Test results will not prove what will happen. They are samples, and hence false positives/negatives possible.
Tests merely just update the prior estimates of probabilities using Bayes’ Therom. Each test result implies a different value of project, each with a different probability. This EVSI is complicated
Bayes’ theorem is impractical for systems design, as elements of factor for updating the posterior probability are unavailable
- Full analysis is complicated process with many possible outcomes
- Involves many assumptions about what the probability of outcomes of the tests
- Analysis maybe incorrect even if math is correct
EVPI¶
Expected Value of Perfect information
Even though it is hypothetical & not perfect, it helps simplify analysis
Establish upper bound on value of test
Concept: Imagine a black box “Cassandra” machine which predicts exactly which event test result \(E_j\) occurs. Therefore, the “best” possible decisions can be made. EV gain over the “no test” EV must be maximum possible, which is the desired upper limit on value of test
Characteristics¶
- Prior probability (occurrence of uncertain event) must equal probability (associated perfect test result)
- For “perfect test”, the posterior probabilities are either 0/1; no doubt remains
- Optimal choice generally obvious, once we “know” what will happen
- EVPI can generally be written directly, without Bayes’ Theorem
Is Test Worthwhile?¶
- If value is linear
- if EVPI < cost of test -> Reject test
- Pragmatic rule of thumb
- If cost > 50% EVPI -> Reject test