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  1. business-and-its-environment

    enterprise
    6 主题
  2. business-structure
    6 主题
  3. size-of-business
    3 主题
  4. business-objectives
    3 主题
  5. stakeholders-in-a-business
    2 主题
  6. external-influences-on-business
    12 主题
  7. business-strategy
    10 主题
  8. human-resource-management
    human-resource-management-hrm
    8 主题
  9. motivation
    4 主题
  10. management
    2 主题
  11. organisational-structure
    5 主题
  12. business-communication
    5 主题
  13. leadership
    2 主题
  14. human-resource-strategy
    3 主题
  15. marketing
    the-nature-of-marketing
    7 主题
  16. market-research
    3 主题
  17. the-marketing-mix
    6 主题
  18. marketing-analysis
    5 主题
  19. marketing-strategy
    3 主题
  20. operations-management
    the-nature-of-operations
    3 主题
  21. inventory-management
    2 主题
  22. capacity-utilisation-and-outsourcing
    1 主题
  23. location-and-scale
    2 主题
  24. quality-management
    1 主题
  25. operations-strategy
    4 主题
  26. finance-and-accounting
    business-finance
    2 主题
  27. sources-of-finance
    3 主题
  28. forecasting-and-managing-cash-flows
    1 主题
  29. costs
    4 主题
  30. budgets
    1 主题
  31. financial-statements
    4 主题
  32. analysing-published-accounts
    6 主题
  33. investment-appraisal
    2 主题
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An introduction to decision trees

  • A decision tree is a quantitative method of tracing the outcomes of a decision so that the most profitable decision can be identified

    •  Research-based estimates and probabilities are used to calculate likely outcomes

    • The net gain from a decision can be identified and used to consider whether an investment is worthwhile 

Advantages of using decision trees

  • Constructing a decision tree diagram may reveal options that haven’t previously been considered

  • Managers are forced to consider the risks associated with their choice, ahead of implementation

  • The quantitative approach requires deep research to be carried out

Limitations of using decision trees

  • Constructing decision trees that can support effective decision-making requires skill to avoid bias and it takes time to gather reliable data

  • Estimates rarely take full account of external factors and cannot include all possible eventualities

  • Qualitative elements such as human resource impacts are not considered, which may affect the probability of success of a decision

  • The time lag between the construction of a decision tree diagram and the implementation of the decision affects the reliability of expected values

Constructing and interpreting decision trees

  • The key elements in a decision tree diagram are

    • Decision points

    • Outcomes

    • Probabilities

    • Expected monetary values

A simple decision tree diagram

A simple decision tree based on the choice of whether to invest in opening a new store or expand its website
A simple decision tree based on the choice of whether to invest in opening a new store or expand its website

Decision points

  • Points where decisions need to be made are called decision points and are represented by squares

    • Square A represents the fact that a choice is required on opening a new store or expanding the website

Outcomes

  • Points where there are different outcomes are represented by circles called nodes

    • Circles B and C represent points at which the different options have a range of outcomes – success or failure

Probability

  • The probability or likelihood of each outcome is shown on the diagram

    • A certain outcome has a probability of 1

    • An impossible outcome has a probability of 0

      • Opening a new store has a 0.7 probability of success and a 0.3 probability of failure

      • Expanding the website has a 0.6 probability of success and a 0.4 probability of failure

Monetary values

  • The monetary value of each decision is based on the expected profit or loss of the outcome

    • If opening a new store is successful, a £420,000 profit is expected

    • If opening a new store is unsuccessful, a £24,000 loss is expected

    • If expanding the website is successful, a £480,000 profit is expected

    • If expanding the website is unsuccessful, a £32,000 loss is expected

Calculating expected monetary values

  • To compare the options, a business should take into account the expected values of each decision presented in the decision tree diagram

  • The following formula is used to calculate the expected monetary value of a decision

(Expected value of success x Probability) + (Expected value of failure x Probability)

  • Using the example above, the expected value of opening a new store is

equals space left parenthesis £ 420 comma 000 space cross times space 0.7 right parenthesis space plus space left parenthesis negative £ 24 comma 000 space cross times space 0.3 right parenthesis space space equals space £ 294 comma 000 space plus space minus £ 7 comma 200 space equals space £ 286 comma 800 space

  • Using the example above the expected value of expanding the website is

<img alt=”equals space left parenthesis £ 480 comma 000 space cross times space 0.6 right parenthesis space plus space space left parenthesis negative £ 32 comma 000 space cross times space 0.4 right parenthesis space equals space £ 288 comma 000 space space plus space minus £ 12 comma 800 equals space £ 275 comma 200″ data-mathml=”<math ><semantics><mrow><mo>=</mo><mo>&#160;</mo><mo>(</mo><mo>&#163;</mo><mn>480</mn><mo>,</mo><mn>000</mn><mo>&#160;</mo><mo>&#215;</mo><mo>&#160;</mo><mn>0</mn><mo>.</mo><mn>6</mn><mo>)</mo><mo>&#160;</mo><mo>+</mo><mo>&#160;</mo><mo>&#160;</mo><mo>(</mo><mo>-</mo><mo>&#163;</mo><mn>32</mn><mo>,</mo><mn>000</mn><mo>&#160;</mo><mo>&#215;</mo><mo>&#160;</mo><mn>0</mn><mo>.</mo><mn>4</mn><mo>)</mo><mo>&#160;</mo><mspace linebreak=”newline”/><mspace linebreak=”newline”/><mo>=</mo><mo>&#160;</mo><mo>&#163;</mo><mn>288</mn><mo>,</mo><mn>000</mn><mo>&#160;</mo><mo>&#160;</mo><mo>+</mo><mo>&#160;</mo><mo>-</mo><mo>&#163;</mo><mn>12</mn><mo>,</mo><mn&gt