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Applying Bayesian networks

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Title: Applying Bayesian networks


1
Applying Bayesian networks
  • Risk forecasting examples

2
The Key Problems
  • Rule Based decision-support systems cannot handle
    uncertainty
  • Regression-based prediction systems cannot handle
    complex cause-effect relationships
  • How to combine different types of evidence
  • How to combine both qualitative and quantitative
    information to arrive at a quantitative risk
    assessment
  • How to make visible and auditable the assumptions
    of the assessor
  • How to achieve more confidence in quantitative
    arguments

3
Bayesian Belief Nets (BBNs)
  • Powerful graphical framework in which to reason
    about uncertainty using diverse forms of evidence
  • Nodes of graph represent uncertain variables
  • Arcs of graph represent casual or influential
    relationships between the variables
  • Associated with each node is a probability table
    (CPT)

4
A very simple BBN
Smoker?
Has Bronchitis
Has Lung Cancer
5
Bayes Theorem
A Person has cancer p(A) 0.1 (prior) B
Person is smoker p(B) 0.5 What is p(A\B)?
(posterior) p(B\A) 0.8 (likelihood)
P(A\B).P(B) P(B\A).P(A) P(A\B)
P(B\A).P(A)/P(B) So p(A\B) 0.16
6
Bayesian Propagation
  • Applying Bayes theorem to update all the
    probabilities when new evidence is entered
  • Intractable even for small BBNs
  • Breakthrough in late 1980s - fast algorithm
  • Tools like Hugin implement efficient propagation
  • Propagation is multi-directional
  • Make predictions even with missing/incomplete data

7
BBN applications - external
  • Microsoft automated decision support
  • Office 95 (and later) help wizards
  • Customer support/diagnostics
  • Hewlett Packard - fault diagnosis
  • NASA space shuttle VISTA system (display relevant
    telemetry data)
  • MUNIN system for medical diagnosis

8
A BBN safety argument
System safety
Faults in test/review
Operational usage
Intrinsic complexity
Accuracy of testing
Correctness of solution
Complexity of solution
Quality of supplier
System criticality
Quality of test team
9
Generic problems of building a BBN
  • Defining the BBN topology
  • What is the right collection of nodes and
    arcs?
  • Use idioms and join operations
  • Defining the Node Probability Table (CPTs)
  • Benefit of BBNs is that we can use empirical AND
    subjective data, but how to deal with
    combinatorial explosion and continuous variables?
  • Elicitation process that extrapolates a complete
    NPT based on a small number of inputs
  • Incorporating probabilistic and deterministic
    functions
  • Building BBN from database

10
BBNs and data-mining
  • BBNs offer classic solution to data-mining
    problem
  • Tools for constructing optimal BBN from large
    databases
  • Improved predictions over classical
    regression-based approaches

11
Summary of BBN Benefits
  • Best Method for reasoning under uncertainty
  • Computational tractability issues have largely
    been solved (unlike, e.g. neural nets) so BBNs
    can be used NOW on real, large-scale problems
  • Can combine diverse data, including subjective
    beliefs and empirical data
  • Can enter incomplete evidence and still obtain
    prediction
  • Perform powerful what-if analysis to test
    sensitivity of conclusions
  • Visual reasoning tool and a major documentation
    aid

12
Advantages Over Classical statistics
  • More adaptable to changes in risk characteristics
  • Dynamic, as new risks are rated the Network
    learns
  • Broad range of risk characteristics taken into
    account
  • Allows investigations of risk characteristics to
    ultimate premium rates
  • Avoids predetermined relationships as these are
    determined directly from experience
  • Adds value to the Risk Management process

13
Never trust your guesses
  • The birthday puzzle
  • What is the chance that in a group of 36 randomly
    selected people, two or more will be found to
    share the same birthday?
  • The neatest way to work out the exact solution is
    to calculate 1 minus the probability that all 36
    people will have different birthdays
  • 1-(364x363xx330)/36535

14
Never trust your guesses
  • The birthday puzzle
  • The false-positive puzzle
  • You are given the followinga) in random
    testing, you test positive for a disease,b) in
    5 of cases, this test shows positive even when
    the subject does not have the disease,c) in the
    population at large, one person in 1000 has the
    disease.
  • What is the probability that you have the disease?

15
Never trust your guesses
  • The birthday puzzle
  • The false-positive puzzle
  • The Monty Hall puzzle
  • This is based on an old American game show in
    which contestants were offered a choice of three
    boxes. Open the correct one and you won a car
    open either of the others and you won a goat.
  • There was a twist, after the contestant had
    chosen, but before the box was opened, the host
    opened one of the other boxes to reveal a goat.
    Then he asked of the contestant wanted to stick
    with his first choice, or change his mind and
    open the third box instead.
  • Question is it a good idea to change your mind,
    a bad idea, or does it make no difference?

16
Getting the Goat
  • The door containing the prize is known to Monty
    and thus Prize has an impact on Monty Opens.
  • Monty will never choose to open the door of your
    first selection so also First Selection has
    impact on Monty Opens.
  • This give us the BBN shown in the figure opposite.

17
Business Strategy Applications
18
Business Strategy Applications
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