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Beslissingsmodellen voor Logistiek Management LM04

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Analyse Jaeger's decision problem. How would you solve the problem? ... Should Jaeger buy the Botrytis spores? Should Jaeger rent the Super Doppler? Slide 37 ... – PowerPoint PPT presentation

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Title: Beslissingsmodellen voor Logistiek Management LM04


1
Management ScienceClass 2 Decision Analysis 1
MBA, Term 1, 2003/2004Dr. Raf Jans Dr.
Moritz Fleischmannoffice F2-53 office
F1-38phone 4082774 phone 4082277 e-mail
rjans_at_fbk.eur.nl e-mail MFleischmann_at_fbk.eur.nl
Rotterdam School of Management
2
This course is about
  • Decision making in a structured way using
    quantitative modeling techniques
  • Excel is among the most powerful and versatile
    quantitative tools available to managers
  • Why are decisions hard?
  • What is a good decision?
  • Topic of today Decision (Tree) Analysis

3
Case discussion the rules of the game
  • Prepare
  • Rearrange facts and interpret them
  • Come to the class with a point of view
  • Participate
  • Introduction of the problem and context
  • Balance between the focus and flow
  • Balance between overcontrol and chaos
  • Decision must be defended
  • Different views are valuable
  • Adapt
  • Listen to other arguments
  • Learn from each other

4
(No Transcript)
5
Introducing the case
  • Freemark Abbey is located in the Napa valley,
    California.
  • Produces about 38.000 cases of premium wine
  • 1000 cases of Riesling wine
  • Dry (20 sugar)
  • Sweet (25 sugar)
  • Botrytis (up to 35 sugar)
  • Analyse Jaegers decision problem
  • How would you solve the problem?
  • What decision do you recommend?

6
Objectives
  • Provide an introduction into the concepts and
    methodologies of Decision Analysis.
  • Develop analytical skills to structure and solve
    problems using decision trees and analyse the
    solutions.
  • Develop practical skills in solving these
    problems with decision support tools (Excel and
    Precision Tree).
  • Give an insight in the application of Decision
    Analysis to business problems.

7
Decision Analysis
  • Framework and methodology for rational decision
    making under uncertainty
  • Structure overall problem as a sequence of
    decisions and events
  • Identify
  • Alternatives / options
  • Objective
  • Uncertainties events and probabilities
  • Consequences
  • Sequence

8
Decision Trees
  • Graphical tool for structuring and analyzing
    decision making under uncertainty
  • Describe decision problem by tree-like
    structurewith two types of nodes

end node
event node
decision node
probability
value
value
9
Decision Trees
decision node
TRUE / FALSE
Decision 1
payoff 1
Name decision Value of optimal decision
TRUE / FALSE
Decision 2
payoff 2
10
Decision Trees
event node
Probability 1
Event 1
payoff 1
Name uncertainty Expected value
Probability 2
Event 2
payoff 2
11
Decision Trees
End node
Chance of occurrence in optimal
solution Cumulative payoff of path
12
Decision Trees (contd.)
  • Roll-back or Fold-back the tree to select
  • decisions and evaluate the overall project
  • evaluate each of the trees leaves as the sum
    of the values along the path leading to it
  • evaluate each event node as the expected value
    across all possible outcomes
  • evaluate each decision node by picking the
    best-valued alternative

13
Limitations
  • Applicable for a moderate number of decisions and
    events
  • Otherwise the size of the tree explodes, making
    it cumbersome to handle and hard to capture
  • Specific techniques available for larger problem
    instances (dynamic programming,
    branch-and-bound,)

14
Applications
  • Product development
  • Power trading in electricity markets
  • Portfolio management (pharmaceuticals)
  • Location decisions (nuclear plant, airport,)
  • Investment projects
  • Medical diagnosis
  • Oil exploration (drill or not?)
  • Marketing (new product introduction)

15
The Value of Decision Analysis at Eastman Kodak
Company
  • Because of the one-time nature of typical
    decision-analysis projects, organizations often
    have difficulty identifying and documenting their
    value. Based on Eastman Kodak Company s records
    for 1990 to 1999, we estimated that decision
    analysis contributed around a billion dollars to
    the organization over this time. The data also
    reflect the many roles decision analysis can
    play. Aside from its monetary benefits, it
    promotes careful thinking about strategies and
    alternatives, improved understanding and
    appreciation of risk, and use of systematic
    decision-making principles.
  • Interfaces, Vol. 31 (5), Sep-Oct 2001, 74-92

16
How Bayer Makes Decisions to Develop New Drugs
  • Drug development is time consuming, resource
    intensive, risky, and heavily regulated. To
    ensure that it makes the best drug-development
    decisions, Bayer Pharmaceuticals (Pharma) uses a
    structured process based on the principles of
    decision analysis to evaluate the technical
    feasibility and market potential of its new
    drugs. In July 1999, the biological products
    leadership committee composed of the senior
    managers within Bayer Biological Products (BP), a
    business unit of Pharma, made its newly formed
    strategic-planning department responsible for the
    commercial evaluation of a new blood-clot-busting
    drug. Pharma senior managers considered our
    recommendations relevant to their decision
    making. The project also institutionalized
    decision analysis at the business-unit level.
  • Interfaces, Vol. 32 (6), Nov-Dec 2002, 77-90

17
Management and Application of Decision and Risk
Analysis in Du Pont
  • Decision and risk analysis (DRA) enables Du
    Pont's business teams to develop creative
    strategy alternatives, evaluate them rigorously,
    select those with the greatest expected
    shareholder value, and design implementation
    plans the businesses can enthusiastically
    support. Du Pont organized internal and external
    resources to develop its DRA capability and
    incorporated DRA in several ongoing business
    processes. One Du Pont business utilized DRA
    techniques to develop a business strategy that
    enhances value by 175 million. 
  • Interfaces, Vol. 32 (6), Nov-Dec 2002, 77-90

18
Software
  • Student Version of DecisionTools Suite
  • PrecisionTree (decision analysis)
  • _at_Risk (simulation)
  • Install the software on your laptop withthe
    CD-rom
  • Folder Palisade DecisionTools
  • Setup.exe
  • Valid initially for 30 days
  • Get authorization code (via the web) to obtaina
    1 year license

19
Implementation in PrecisionTree
  • Demonstrate the implementation of the Freemark
    Abbey case using PrecisionTree
  • Advantages of PrecisionTree
  • Intuitive and easy to learn
  • Fully integrated within a spreadsheet model
  • Generate customized reports and graphs (risk
    profiles and sensitivity analysis)

20
Building the tree
21
Building the tree
22
Building the tree
23
Building the tree
24
Building the tree
25
Building the tree
26
Building the tree
27
Building the tree
28
Building the tree
29
Building the tree
30
Risk Profiles
  • Each decision/strategy is linked to a set of
    potential results with associated probabilities
    gt risk profile
  • Expected value alone provides limited
    informationgt What if alternative decision leads
    to slightly lower expected payoff but at a much
    lower risk?
  • Expected value criterion assumes risk neutrality
  • Risk is associated with a decision/strategy,not
    with a problem

31
Risk Profiles Freemark Abbey
32
Summary Decision Tree Methodology
  • Structure the problem as a sequence of decisions
    and events
  • Make sure overall sequence is correct
  • Associate probabilities with random outcomes
  • Associate payoffs with decisions and with random
    outcomes
  • Roll-back the tree to select decisions and
    evaluate the outcome
  • Events compute expected value
  • Decisions pick best option

33
Summary Decision Tree Methodology
  • Analyze risk profiles of different decisions
  • Look beyond expected values
  • Perform sensitivity analysis
  • When do decisions change?
  • Break-even analysis

34
Key Insights
  • Uncertainty does not inhibit rational decision
    making
  • Structure the problem you want to analyze
  • Think carefully about
  • Your objectives
  • Your options
  • Uncertainties events and likelihoods
  • Consequences costs or payoffs
  • Sequence
  • Decision trees provide intuitive tool for
    sequential decision making under uncertainty

35
Key Insights
  • Each decision corresponds with a specific risk
    profile
  • Make a clear distinction between the quality of a
    decision and the quality of its outcome
  • Analyze impact of parameter changes on decisions
    and outcomes
  • Identify key drivers of a decision
  • DA is a way of communicating your reasoning and
    analysis in a structured way

36
Outlook
  • Class 4 Freemark Abbey revisited,advanced
    topics in decision analysis
  • Preparation
  • Browse through Chapter 10 Decision making under
    uncertainty of Winston Albright
  • Think about the following questions related to
    the Freemark Abbey case
  • Should Jaeger buy the Botrytis spores?
  • Should Jaeger rent the Super Doppler?

37
Information on the web
  • Decision Analysis Society homepage
    http//faculty.fuqua.duke.edu/daweb
  • Software companies
  • Palisade (http//www.palisade.com)
  • Consultancy companies
  • Strategic Decisions Group (http//www.sdg.com)
  • Decision Strategies (http//decisionstrategies.com
    )
  • ...

38
If you want to know more
  • Application examples
  • Various applications Interfaces
    http//www.interfaces.smeal.psu.edu/issues/specia
    l.php
  • Volume 22, nr. 6, Nov-Dec 1992
  • Volume 29, nr. 6, Nov-Dec 1999
  • Medical decision making (Interfaces, Vol.28,
    Nr.4)http//www.interfaces.smeal.psu.edu/issues/r
    egular.php?article_idv28n4a8
  • Managing hydropower in Brazil (OR/MS Today,
    April 2000) http//lionhrtpub.com/orms/orms-4-00/e
    scudero.html
  • Software Survey (OR/MS Today, June 2002)
  • http//lionhrtpub.com/orms/surveys/das/das.html

39
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