Slide 1 PGM 2012 The Sixth European Workshop on Probabilistic Graphical Models Granada, Spain 20 September 2012 Norman Fenton Queen Mary University of.

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Presentation transcript:

Slide 1 PGM 2012 The Sixth European Workshop on Probabilistic Graphical Models Granada, Spain 20 September 2012 Norman Fenton Queen Mary University of London and Agena Ltd Improving Legal Reasoning With Bayesian Networks

Slide 2 Overview 1. The cases 2. Probability fallacies and the law 3. The scaling problem of Bayes 4. Addressing the challenges 5. Conclusions and way forward

Slide 3 THE CASES 1

Slide 4 R vs Levi Bellfield, Sept 07 – Feb 08 Amelie Delagrange Marsha McDonnell

Slide 5 R v Gary Dobson 2011 Stephen Lawrence

Slide 6 R v LW Convicted of rape of half-sister

Slide 7 R v Mark Dixie, Sally Anne-Bowman

Slide 8 R v Barry George, Jill Dando

Slide 9 PROBABILITY FALLACIES AND THE LAW 2

Slide 10 Questions What is divided by ? What is the area of a field whose length is approximately 100 metres and whose width is approximately 50 metres?

Slide 11 Court of Appeal Rulings “The task of the jury is to evaluate evidence and reach a conclusion not by means of a formula, mathematical or otherwise, but by the joint application of their individual common sense and knowledge of the world to the evidence before them” (R v Adams, 1995) “..no attempt can realistically be made in the generality of cases to use a formula to calculate the probabilities... it is quite clear that outside the field of DNA (and possibly other areas where there is a firm statistical base) this court has made it clear that Bayes theorem and likelihood ratios should not be used” (R v T, 2010)

Slide 12 Revising beliefs when you get forensic evidence Fred is one of a number of men who were at the scene of the crime. The (prior) probability he committed the crime is the same probability as the other men. We discover the criminal’s shoe size was 13 – a size found in only 1 in a 100 men. Fred is size 13. Clearly our belief in Fred’s innocence decreases. But what is the probability now?

Slide 13 Are these statements correct/ equivalent? the probability of this evidence (matching shoe size) given the defendant is innocent is 1 in 100 the probability the defendant is innocent given this evidence is 1 in 100 The ‘prosecution fallacy’ is to treat the second statement as equivalent to the first

Slide 14

Slide 15 How the fallacy is also stated “The chances of finding this evidence in an innocent man are so small that you can safely disregard the possibility that this man is innocent”

Slide 16 Ahh.. but DNA evidence is different? Very low random match probabilities … but same error Low template DNA ‘matches’ have high random match probabilities Principle applies to ALL types of forensic match evidence Probability of testing/handling errors not considered

Slide 17 Tip of the Fallacies Iceberg Confirmation bias fallacy Base rate neglect Treating dependent evidence as independent Coincidences fallacy Various evidence utility fallacies Cross admissibility fallacy ‘Crimewatch UK’ fallacy Fenton, N.E. and Neil, M., 'Avoiding Legal Fallacies in Practice Using Bayesian Networks', Australian Journal of Legal Philosophy 36, , 2011

Slide 18 THE SCALING PROBLEM OF BAYES 3

Slide 19 The basic legal argument E (evidence) H (hypothesis)

Slide 20..but this is a typical real BN

Slide 21 An intuitive explanation of Bayes for the simple case

Slide 22 Fred has size 13

Slide 23 Imagine 1,000 other people also at scene Fred has size 13

Slide 24

Slide 25 Fred is one of 11 with size 13 So there is a 10/11 chance that Fred is NOT guilty That’s very different from the prosecution claim of 1%

Slide People at scene defendant others Type XNot Type X 990 Type X 10 Not Type X Decision Tree Equivalent

Slide 27 Target is type X Target is source Source is type X Target tested X Source tested X But even single piece of forensic evidence is NOT a 2-node BN Source is type X

Slide 28 H1 Prob =m Prob =1-mtrue false H1: target = source H2: source is type X H2 true false Prob=1-m true false Cases of E1, E2 false not considered H3: target is type X H3 Prob =m Prosecution likelihood Defence likelihood m(1-v) 2 E1: source tested as type X E2: target tested as type X H3 Prob =1 Prob =0 true false E1 Prob =0 Prob =1 true false E1 Prob =m Prob =1-m true false E1 Prob =m true false E1 Prob=1-m E2 true Prob =1-v true Prob =1-v Impossible E2 true Prob =u true Prob =u E2 true Prob =1-v true Prob =u m is the random match probability for type X u is the false positive probability for X v is the false negative probability for X E2 true Prob =u true Prob = 1-v E2 true Prob =u true Prob =u (1-m)u 2 m (1-m) (1-v) u (1-m)mu(1-v) Probability of branch (1-m) 2 u 2 m 2 (1-v) 2 E2 true Prob =1-v true Prob =1-v Decision Tree far too complex

Slide 29 Even worse: do it formulaically from first principles

Slide 30 Hence the Calculator Analogy

Slide 31 Assumes perfect test accuracy (this is a 1/1000 random match probability)

Slide 32 Assumes false positive rate 0.1 false negative rate 0.01

Slide 33 ADDRESSING THE CHALLENGES 4

Slide 34 The Challenges “No such thing as probability” “Cannot combine ‘subjective’ evidence with ‘objective’ (the DNA obsession) Scaling up from ‘2 node’ BN Building complex BNs Defining subjective priors and the issue of the likelihood ratio Getting consensus from other Bayesians

Slide 35 Methods to make building legal BN arguments easier ‘idioms’ for common argument fragments (accuracy of evidence, motive/opportunity, alibi evidence) The mutual exclusivity problem Fenton, N. E., D. Lagnado and M. Neil (2012). "A General Structure for Legal Arguments Using Bayesian Networks." to appear Cognitive Science.

Slide 36 Bayesian nets in action Separates out assumptions from calculations Can incorporate subjective, expert judgement Can address the standard resistance to using subjective probabilities by using ranges. Easily show results from different assumptions …but must be seen as the ‘calculator’

Slide 37 R v Bellfield Numberplate evidence Prosecution opening fallacies Judge’s instruction to Prosecuting QC … but several newspapers on 12 Feb 2008: »"Forensic scientist Julie-Ann Cornelius told the court the chances of DNA found on Sally Anne’s body not being from Dixie were a billion to one."

Slide 38 R v Dobson Probabilistic flaws in forensic reports Revealed in cross-examination of experts Newspaper reported fallacies wrongly reported

Slide 39 R v LW BN showed reliance on DNA evidence fundamentally flawed Appeal granted

Slide 40 R v Barry George (and the issue of the likelihood ratio) H: Hypothesis “Barry George did not fire gun” E: small gunpowder trace in coat pocket Defence likelihood P(E|H) = 1/100 … …But Prosecution likelihood P(E| not H) = 1/100 So LR = 1 and evidence ‘has no probative value’ But the argument is fundamentally flawed

Slide 41 LR=1 but hypotheses not mutually exclusive …..E has real probative value on Hp

Slide 42 LR=1 but H not ultimate hypothesis …..E has real probative value on Hp

Slide 43 CONCLUSIONS AND WAY FORWARD 4

Slide 44 Misplaced optimism? “I assert that we now have a technology that is ready for use, not just by the scholars of evidence, but by trial lawyers.” Edwards, W. (1991). "Influence Diagrams, Bayesian Imperialism, and the Collins case: an appeal to reason." Cardozo Law Review 13:

Slide 45 Summary The only rational way to evaluate probabilistic evidence is being avoided because of basic misunderstandings Real Bayesian legal arguments are NOT two- node BNs Lawyers will never understand complex Bayesian inference Hence Bayesian arguments cannot be presented from first principles. Use BNs and focus on the calculator analogy (argue about the prior assumptions NOT about the Bayesian calculations) Use BNs to combine all the evidence in a case

Slide 46 A Call to Arms Bayes and the Law Network Transforming Legal Reasoning through Effective use of Probability and Bayes Contact: Fenton, N.E. and Neil, M., 'Avoiding Legal Fallacies in Practice Using Bayesian Networks', Australian Journal of Legal Philosophy 36, , 2011 Fenton, N. E. (2011). "Science and law: Improve statistics in court." Nature 479: Fenton, N.E. and Neil, M., 'On limiting the use of Bayes in presenting forensic evidence' Fenton, N. E., D. Lagnado and M. Neil (2012). "A General Structure for Legal Arguments Using Bayesian Networks." to appear Cognitive Science.

Slide 47 Blatant Plug for New Book CRC Press, ISBN: , ISBN 10: , publication date 28 October 2012