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Decision Analysis

Decision Analysis vs Flexibility Analysis

Due to this, flexibility analysis is preferred over decision analysis

  • Decision analysis

  • assumes you can define choices to take at any stage

  • Implies focus on a few distant choices

  • Flexibility analysis

  • encourages to explore

    • What decisions to take

    and

    • When to take them
  • as granular as required

Outcome

  1. Strategies for altering choices as future is revealed, not a unique ā€œoptimal choiceā€

  2. ā€˜Second bestā€™ choices which offer

  3. Insurance against downside

  4. Opportunity to exploit upside

ā€˜Second bestā€™ strategies are sub-optimal for each outcome, but preferable as they offer flexibility to do well in a range of outcomes. It is never the best, but never the worst

  1. Education of client about distribution, range of possible results (Value at Risk)

Motivation

People acting intuitively deal poorly with complex, uncertain situations. They

  • Process probability info poorly
  • Over-simplify complexity & alter reality
  • Focus on extremes
  • Focus on end states, not whole process

Decision analysis helps overcome this

Characteristics

  • Assumes that every decision in the set of choices is discrete
  • Looks over several time periods
  • Deals with uncertainties
  • Standard method
  • Can include utility assessment (such as levels of consumer satisfaction)

Decision Tree

  • Structure
  • Decision points: Choices
  • Chance points (possible outcomes) after each decision
  • Data
  • Value of each possible outcome
  • Probability
  • Uncertainties

image-20240128202304041

Goal: Maximize expected value of outcomes

For each set of alternatives, calculate expected value. Then choose alternative with maximum EV

Last Updated: 2024-05-12 ; Contributors: AhmedThahir

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