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Bayes’s Theorem and the Weighing of Evidence by Juries

Bayes’s Theorem and the Weighing of Evidence by Juries. Philip Dawid University College London. STATISTICS = LAW. Interpretation of evidence. Hypothesis testing. Decision-making under uncertainty. Prosecution Hypothesis. INGREDIENTS. Defence Hypothesis. Evidence. BAYESIAN APPROACH.

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Bayes’s Theorem and the Weighing of Evidence by Juries

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  1. Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

  2. STATISTICS = LAW • Interpretation of evidence • Hypothesis testing • Decision-making under uncertainty

  3. Prosecution Hypothesis INGREDIENTS • Defence Hypothesis • Evidence

  4. BAYESIAN APPROACH Find posterior probability of guilt: – or posterior odds: • FREQUENTIST APPROACH Look at & effect on decision rules – and possibly

  5. SALLY CLARK Sally Clark murdered them Sally Clark’s two babies died unexpectedly Cot deaths (SIDS)

  6. POSSIBLE DECISION RULE • CONVICT whenever OCCURS Can we discount possibility of error? — if so, right to convict

  7. Alternatively… • P(2 babies die of SIDS = 1/73 million) (?) • P(2 babies die of murder = 1/2000 million) (??) BOTH figures are equally relevant to the decision between the two possible causes

  8. BAYES: POSTERIOR ODDS LIKELIHOOD RATIO PRIOR ODDS  = 73m ?? If prior odds = 1/2000 million, Posterior odds = 0.0365

  9. IMPACT OF EVIDENCE By BAYES, this is carried by the LIKELIHOODRATIO • Appropriate subject of expert testimony? • Instruct jury on how to combine LR with prior odds?

  10. IMPACT OF A LR OF 100 Probability of Guilt

  11. IDENTIFICATION EVIDENCE M = DNA match B = other background evidence Assume – “match probability” MP

  12. PROSECUTOR’S ARGUMENT The probability of a match having arisen by innocent means is 1/10 million. So = 1/10 million – i.e. is overwhelmingly close to 1. –CONVICT

  13. DEFENCE ARGUMENT • Absent other evidence, there are 30 million potential culprits • 1 is GUILTY (and matches) • ~3 are INNOCENT and match • Knowing only that the suspect matches, he could be any one of these 4 individuals • So –ACQUIT

  14. BAYES • POSTERIOR ODDS = (10 MILLION)  “PRIOR” ODDS • PROSECUTOR’S argument OK if • DEFENCE argument OK if Only BAYES allows for explicit incorporation of B

  15. DENIS ADAMS • Sexual assault • DNA match • Match probability = 1/200 million 1/20 million 1/2 million • Doesn’t fit description • Victim: “not him” • Unshaken alibi • No other evidence to link to crime

  16. Court presented with • LR for match • Instruction in Bayes’s theorem • Suggested LR’s for defence evidence • Suggested priors before any evidence

  17. PRIOR • 150,000 males 18-60 in local area DEFENCE EVIDENCE B=D&A • D: Doesn’t fit description/victim does not recognise • A: Alibi

  18. POSTERIOR

  19. Trial –Appeal – Retrial – Appeal BAYES rejected • “usurps function of jury” • “jury must apply its common sense” – HOW? SALVAGE? • Use “Defence argument” • Apply other evidence

  20. DATABASE SEARCH • Rape, DNA sample • No suspect • Search police database, size 10,000 • Find single “match”, arrest • Match probability1/1 million EFFECT OF SEARCH??

  21. DEFENCE – (significantly) weakens impact of evidence PROSECUTION We have eliminated 9,999 potential culprits – (slightly) strengthens impact of evidence

  22. BAYES  Prosecutor correct Defence switches hypotheses • Suspect is guilty • Some one in database is guilty – equivalent AFTER search – but NOT BEFORE Different priors Different likelihood ratio – EFFECTS CANCEL!

  23. CONCLUSIONS • Interpretation of evidence raises deep and subtle logical issues • STATISTICS and PROBABILITY can address these • BAYES’S THEOREM is the cornerstone Need much greater interaction between lawyers and statisticians

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