Description:

  • Bayes’ Net but there is action and utility
  • Square denotes action
  • Eclipse denotes the chance nodes
  • Kite denotes utility
  • Arc denotes influence

Expected utility (EU):

  • : Expected utility for taking action a

Maximum Expected Utility (MEU):

  • action maximizes the expected utility given the evidence

Outcome Tree:

  • Almost like an Expectimax Search but for outcome trees we annotate our nodes with what we know at any given moment (inside the curly braces)

Value of Perfect Information (VPI):

  • Think of the forecast as a separate variable, and we perfectly know the outcome that that variable
    • Forecast variable has their own distribution of being good/bad
    • different from probability of var given that forecast var
  • With knowing more evidence, we can have different probablities
      • where is probability of actual variable given other evidence and forecast
  • Properties of VPI:
    • : non negative: 0. Observing new information always allows you to make a more informed decision, and so your max-imum expected utility can only increase (or stay the same)
    • : Nonadditivity, observed twice doesnt increase VPI by sum of them
    • : Order independent, observe 2 variables in any order is the same