Logistic-regression calibration and fusion are potential steps in the calculation of forensic likelihood ratios. The present paper provides a tutorial on logistic-regression calibration and fusion at a practical conceptual level with minimal mathematical complexity. A score is log-likelihood-ratio like in that it indicates the degree of similarity of a pair of samples while taking into consideration their typicality with respect to a model of the relevant population. A higher-valued score provides more support for the same-origin hypothesis over the different-origin hypothesis than does a lower-valued score; however, the absolute values of scores are not interpretable as log likelihood ratios. Logistic-regression calibration is a procedure for converting scores to log likelihood ratios, and logistic-regression fusion is a procedure for converting parallel sets of scores from multiple forensic-comparison systems to log likelihood ratios. Logistic-regression calibration and fusion were developed for automatic speaker recognition and are popular in forensic voice comparison. They can also be applied in other branches of forensic science, a fingerprint/fingermark example is provided.
翻译:后勤递减校准和聚合是计算法证可能性比率的潜在步骤。本文件对后勤递减校准和聚合进行理论指导,其实际概念层面的数学复杂性最小。评分是逻辑-相似性-准差,它表明一对样品的相似性,同时考虑到其在有关人口模式方面的典型特征。价值较高的评分比低分对不同来源假设的起源假设提供了更多的支持;不过,分数的绝对值不能被解释为记录概率比率。后勤递减校准是将得分转换成日志概率比率的一种程序,而后勤递减是将多个法证比较系统的平行得分转换为记录概率比率的一种程序。为自动识别发言者和在法证语音比较中很受欢迎开发了后勤递减校准和聚合,它们也可以在法证科学的其他分支中应用,提供了指纹/指纹标记的例子。