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首页> 外文期刊>Journal of forensic sciences. >Bayesian Networks and the Value of the Evidence for the Forensic Two-Trace Transfer Problem
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Bayesian Networks and the Value of the Evidence for the Forensic Two-Trace Transfer Problem

机译:贝叶斯网络与法医两轨转移问题的证据价值

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摘要

Forensic scientists face increasingly complex inference problems for evaluating likelihood ratios (LRs) for an appropriate pair of propositions. Up to now, scientists and statisticians have derived LR formulae using an algebraic approach. However, this approach reaches its limits when addressing cases with an increasing number of variables and dependence relationships between these variables. In this study, we suggest using a graphical approach, based on the construction of Bayesian networks (BNs). We first construct a BN that captures the problem, and then deduce the expression for calculating the LR from this model to compare it with existing LR formulae. We illustrate this idea by applying it to the evaluation of an activity level LR in the context of the two-trace transfer problem. Our approach allows us to relax assumptions made in previous LR developments, produce a new LR formula for the two-trace transfer problem and generalize this scenario to n traces.
机译:法医科学家面临越来越复杂的推理问题,无法评估一对合适的命题的似然比(LRs)。到目前为止,科学家和统计学家已经使用代数方法推导了LR公式。但是,这种方法在处理变量数量不断增加以及这些变量之间的依赖关系的情况时达到了极限。在这项研究中,我们建议使用基于贝叶斯网络(BNs)构建的图形方法。我们首先构造一个捕获问题的BN,然后从该模型推导用于计算LR的表达式,以将其与现有LR公式进行比较。我们通过将其应用于两迹转移问题的活动水平LR的评估来说明此想法。我们的方法使我们可以放宽在先前LR开发中所做的假设,针对两迹线转移问题生成新的LR公式,并将这种情况推广到n条迹线。

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