bayes’s theorem and the weighing of evidence by juries philip dawid university college london

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

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

Bayes’s Theorem and the Weighing of Evidence by Juries

Philip Dawid

University College London

Page 2: 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

Page 3: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

INGREDIENTS

Prosecution Hypothesis G

Defence Hypothesis G

Evidence E

Page 4: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

– or posterior odds:

)|( EGP

)|(

)|(

E

E

GP

GP

BAYESIAN APPROACH

FREQUENTIST APPROACH

– and possibly

)|( GP E

)|( GP E

Find posterior probability of guilt:

Look at & effect on

decision rules

Page 5: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

SALLY CLARK

E

G

G

1)|( GP E

Sally Clark’s two babies died unexpectedly

Sally Clark murdered them

Cot deaths (SIDS)

(??)million73/1)|( GP E

Page 6: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

POSSIBLE DECISION RULE

E OCCURS

million73/1 ) |error (

0 ) |error (

GP

GP

Can we discount possibility of error?

— if so, right to convict

• CONVICT whenever

Page 7: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

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

Page 8: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

BAYES:

POSTERIOR

ODDS

)(

)(

)(

)(

)|(

)|(

GP

GP

GP

GP

GP

GP

|E

|E

E

E

=LIKELIHOOD

RATIO PRIOR

ODDS

If prior odds = 1/2000 million, Posterior odds = 0.0365

%5.3)|( EGP

73m ??

Page 9: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

IMPACT OF EVIDENCE

By BAYES, this is carried by the

LIKELIHOOD RATIO

)|(

)|(

GP

GPLR

E

E

Appropriate subject of expert testimony?

Instruct jury on how to combine LR with prior odds?

Page 10: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

IMPACT OF A LR OF 100

PRIOR .001 .01 .1 .3 .5 .7 .9

POSTERIOR .09 .5 .92 .98 .99 .996 .999

Probability of Guilt

Page 11: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

IDENTIFICATION EVIDENCE),( BME

M = DNA matchB = other background evidence

Assume

million10/1)|(

1)|(

GMP

GMP

– “match probability”MP

Page 12: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

PROSECUTOR’S ARGUMENT

The probability of a match having arisen by innocent means is 1/10 million.

So )|( MGP = 1/10 million

– i.e. )|( MGP is overwhelmingly close to 1.

– CONVICT

Page 13: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

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 41)|( MGP

–ACQUIT

Page 14: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

BAYES POSTERIOR ODDS = (10 MILLION) “PRIOR” ODDS

)|(

)|(

BGP

BGP

PROSECUTOR’S argument OK if

Only BAYES allows for explicit incorporation of B

2/1)|( BGP

DEFENCE argument OK if million 1/30)|( BGP

MPLR /1

Page 15: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

DENIS ADAMS

– Match probability = 1/200 million

1/20 million

1/2 million

Doesn’t fit descriptionVictim: “not him”Unshaken alibiNo other evidence to link to crime

• Sexual assault• DNA match

Page 16: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

Court presented with

• LR for match

• Instruction in Bayes’s theorem

• Suggested LR’s for defence evidence

• Suggested priors before any evidence

?%80)|( EGP

Page 17: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

PRIOR• 150,000 males 18-60 in local area

000,200/1)( GP

DEFENCE EVIDENCE B=D&A• D: Doesn’t fit description/victim does not

recognise 9/19.0/1.0 DLR

2/15.0/25.0 ALR

million36/1)|( BGP

• A: Alibi

Page 18: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

POSTERIOR

Match probability 1/200m 1/20m 1/2m

Posterior .98 .85 .35)&|( BMGP

Page 19: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

Trial –Appeal – Retrial – Appeal

• “usurps function of jury”

• “jury must apply its common sense”

BAYES rejected

– HOW?

SALVAGE?1. Use “Defence argument”

2. Apply other evidence

Page 20: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

DATABASE SEARCH

• Rape, DNA sample

• No suspect

• Search police database, size 10,000• Find single “match”, arrest

• Match probability 1/1 million

EFFECT OF SEARCH??

Page 21: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

DEFENCE

– (significantly) weakens impact of evidence

100

1)million1/1(000,10)|databaseinmatch( GP

PROSECUTION

We have eliminated 9,999 potential culprits

– (slightly) strengthens impact of evidence

Page 22: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

BAYES Prosecutor correct

1. Suspect is guilty

2. Some one in database is guilty

Defence switches hypotheses

– equivalent AFTER search– but NOT BEFORE

Different priors Different likelihood ratio

– EFFECTS CANCEL!

Page 23: Bayes’s Theorem and the Weighing of Evidence by Juries Philip Dawid University College London

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