首页> 外文期刊>Forensic science international >Probabilistic evidential assessment of gunshot residue particle evidence (Part I): likelihood ratio calculation and case pre-assessment using Bayesian networks.
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Probabilistic evidential assessment of gunshot residue particle evidence (Part I): likelihood ratio calculation and case pre-assessment using Bayesian networks.

机译:枪支残留物颗粒物证据的概率证据评估(第一部分):似然比计算和使用贝叶斯网络进行病例预评估。

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摘要

Well developed experimental procedures currently exist for retrieving and analyzing particle evidence from hands of individuals suspected of being associated with the discharge of a firearm. Although analytical approaches (e.g. automated Scanning Electron Microscopy with Energy Dispersive X-ray (SEM-EDS) microanalysis) allow the determination of the presence of elements typically found in gunshot residue (GSR) particles, such analyses provide no information about a given particle's actual source. Possible origins for which scientists may need to account for are a primary exposure to the discharge of a firearm or a secondary transfer due to a contaminated environment. In order to approach such sources of uncertainty in the context of evidential assessment, this paper studies the construction and practical implementation of graphical probability models (i.e. Bayesian networks). These can assist forensic scientists in making the issue tractable within a probabilistic perspective. The proposed models focus on likelihood ratio calculations at various levels of detail as well as case pre-assessment.
机译:当前存在完善的实验程序,用于从怀疑与枪支释放有关的个人手中检索和分析颗粒证据。尽管分析方法(例如,具有能量色散X射线的自动扫描电子显微镜(SEM-EDS)显微分析)可以确定通常在枪支残留物(GSR)颗粒中发现的元素的存在,但此类分析无法提供有关给定颗粒实际含量的信息资源。科学家可能需要说明的可能来源是枪支排放的主要暴露场所或受污染环境引起的二次转移。为了在证据评估的背景下解决此类不确定性来源,本文研究了图形概率模型(即贝叶斯网络)的构造和实际实现。这些可以帮助法医科学家从概率的角度解决问题。所提出的模型着重于在各个细节级别上进行似然比计算以及对案例进行预评估。

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