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首页> 外文期刊>Forensic science international >Probabilistic evidential assessment of gunshot residue particle evidence (Part II): Bayesian parameter estimation for experimental count data.
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Probabilistic evidential assessment of gunshot residue particle evidence (Part II): Bayesian parameter estimation for experimental count data.

机译:枪支残留粒子证据(第二部分):实验计数数据的贝叶斯参数估计的概率证据评估。

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摘要

Part I of this series of articles focused on the construction of graphical probabilistic inference procedures, at various levels of detail, for assessing the evidential value of gunshot residue (GSR) particle evidence. The proposed models--in the form of Bayesian networks--address the issues of background presence of GSR particles, analytical performance (i.e., the efficiency of evidence searching and analysis procedures) and contamination. The use and practical implementation of Bayesian networks for case pre-assessment is also discussed. This paper, Part II, concentrates on Bayesian parameter estimation. This topic complements Part I in that it offers means for producing estimates usable for the numerical specification of the proposed probabilistic graphical models. Bayesian estimation procedures are given a primary focus of attention because they allow the scientist to combine (his/her) prior knowledge about the problem of interest with newly acquired experimental data. The present paper also considers further topics such as the sensitivity of the likelihood ratio due to uncertainty in parameters and the study of likelihood ratio values obtained for members of particular populations (e.g., individuals with or without exposure to GSR).
机译:本系列文章的第I部分专注于在各种细节中建造图形概率推理程序,用于评估枪支残留物(GSR)粒子证据的证据价值。拟议的模型 - 以贝叶斯网络的形式 - 解决GSR粒子的背景存在,分析性能(即证据搜索和分析程序的效率)和污染问题。还讨论了贝叶斯网络的使用和实际实施,以案例预评估。本文第II部分集中于贝叶斯参数估计。本主题补充了第一部分,因为它提供了生产可用于所提出的概率图形模型的数值规范的估计的方法。贝叶斯估计程序被赋予了主要关注的主要焦点,因为他们允许科学家结合(他/她)关于对新获得的实验数据的兴趣问题的知识。本文还考虑了由于参数的不确定性而等进一步的主题,例如似然比的敏感性以及对特定群体成员获得的似然比值的研究(例如,有或没有暴露于GSR的个体)。

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