PRAIDec 2, 2015

Assessing forensic evidence by computing belief functions

arXiv:1512.01250v28 citations
Originality Incremental advance
AI Analysis

This work addresses forensic science problems by offering a more flexible framework for evidence evaluation, though it is incremental as it builds on existing belief function theory.

The paper tackles limitations of classical probability in forensic evidence assessment, such as inability to model ignorance, by proposing a belief function calculus based on Dempster-Shafer conditioning, which generalizes classical methods and yields different results when no priors are assumed.

We first discuss certain problems with the classical probabilistic approach for assessing forensic evidence, in particular its inability to distinguish between lack of belief and disbelief, and its inability to model complete ignorance within a given population. We then discuss Shafer belief functions, a generalization of probability distributions, which can deal with both these objections. We use a calculus of belief functions which does not use the much criticized Dempster rule of combination, but only the very natural Dempster-Shafer conditioning. We then apply this calculus to some classical forensic problems like the various island problems and the problem of parental identification. If we impose no prior knowledge apart from assuming that the culprit or parent belongs to a given population (something which is possible in our setting), then our answers differ from the classical ones when uniform or other priors are imposed. We can actually retrieve the classical answers by imposing the relevant priors, so our setup can and should be interpreted as a generalization of the classical methodology, allowing more flexibility. We show how our calculus can be used to develop an analogue of Bayes' rule, with belief functions instead of classical probabilities. We also discuss consequences of our theory for legal practice.

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