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Two-stage approach for the inference of the source of high-dimensional and complex chemical data in forensic science

机译:法医学中高维和复杂化学数据源推断的两级方法

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摘要

Forensic chemists are often criticised for the lack of quantitative support for the conclusions of their examinations. While scholars advocate for the use of a Bayes factor to quantify the weight of forensic evidence, it is often impossible to assign the necessary probability measures to perform likelihood-based inference on chemical data. To address this issue, we leverage the properties of kernel functions to offer a method that allows for statistically supporting the inference of the identity of source of sets of trace and control objects by way of a single test. Our method is generic in that it can be easily tailored to any type of data encountered in forensic chemistry, and our method does not depend on the dimension or the type of the considered data. The application of our method to paint evidence analysed by FTIR shows that this type of evidence carries substantial probative value. Finally, our approach can easily be extended to other types of chemical evidence such as glass, fibres, and dust.
机译:法医化学家经常因其检查结论缺乏定量支持而受到批评。虽然学者们主张使用贝叶斯因子来量化法医证据的权重,但通常不可能指定必要的概率度量来根据化学数据进行基于可能性的推理。为了解决这个问题,我们利用核函数的属性提供了一种方法,该方法允许通过一次测试从统计上支持对跟踪和控制对象集的源身份的推断。我们的方法是通用的,因为它可以很容易地适应法医化学中遇到的任何类型的数据,我们的方法不依赖于所考虑的数据的维度或类型。我们的方法在FTIR分析的绘画证据中的应用表明,这类证据具有很大的证明价值。最后,我们的方法可以很容易地扩展到其他类型的化学证据,如玻璃、纤维和灰尘。

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