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Compositional Bayesian modelling for computation of evidence collection strategies

机译:用于证据收集策略计算的组合贝叶斯建模

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摘要

As forensic science and forensic statistics become increasingly sophisticated, and judges and juries demand more timely delivery of more convincing scientific evidence, crime investigation is becoming progressively more challenging. In particular, this development requires more effective and efficient evidence collection strategies, which are likely to produce the most conclusive information with limited available resources. Evidence collection is a difficult task, however, because it necessitates consideration of: a wide range of plausible crime scenarios, the evidence that may be produced under these hypothetical scenarios, and the investigative techniques that can recover and interpret the plausible pieces of evidence. A knowledge based system (KBS) can help crime investigators by retrieving and reasoning with such knowledge, provided that the KBS is sufficiently versatile to infer and analyse a wide range of plausible scenarios. This paper presents such a KBS. It employs a novel compositional modelling technique that is integrated into a Bayesian model based diagnostic system. These theoretical developments are illustrated by a realistic example of serious crime investigation.
机译:随着法医学和法医学统计的日趋完善,法官和陪审团要求更及时地提供更具说服力的科学证据,犯罪调查正变得越来越具有挑战性。特别是,这种发展需要更有效的证据收集策略,这些策略可能会在可用资源有限的情况下产生最确定的信息。但是,证据收集是一项艰巨的任务,因为它必须考虑以下方面:各种可能的犯罪场景,在这些假设场景下可能产生的证据,以及可以恢复和解释合理证据的调查技术。基于知识的系统(KBS)可以通过检索和推理此类知识来帮助犯罪调查人员,但前提是KBS具有足够的通用性来推断和分析各种可能的情况。本文介绍了这样的KBS。它采用了一种新颖的成分建模技术,该技术已集成到基于贝叶斯模型的诊断系统中。这些理论上的发展以严肃的犯罪侦查的现实例子来说明。

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