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A Comparative Study of Two Statistical Modelling Approaches for Estimating Multivariate Likelihood Ratios in Forensic Voice Comparison

机译:两种统计建模方法估计法医语音比较中的多元似然比的比较研究

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The acoustic features used in forensic voice comparison (FVC) are correlated in almost all cases. A sizeable proportion of FVC studies and casework has relied, for statistical modelling, on the multivariate kernel density likelihood ratio (MVKDLR) formula, which considers the correlations between the features and computes an overall combined likelihood ratio (LR) for the offender-suspect comparison. However, following concerns over the robustness of the MVKDLR, in particular its computational weakness and numerical instability specifically when a large number of features are employed, the principal component analysis kernel density likelihood ratio (PCAKDLR) approach was developed as an alternative. In this study, the performance of the two approaches is investigated and compared using Monte Carlo-simulated synthetic data based on the 16~(th)-order Mel Frequency Cepstrum Coefficients extracted from the long vowel /e:/ segments of spontaneous speech uttered by 118 native Japanese male speakers. Performance is assessed in terms of validity (= accuracy) and reliability (= precision), with the log-likelihood ratio cost (C_(llr)) being used to assess validity and the 95% credible interval (95%CI) to assess reliability.
机译:在几乎所有情况下,法医语音比较(FVC)中使用的声学功能都是相关的。 FVC研究和案例研究在相当大的比例上依赖于多元内核密度似然比(MVKDLR)公式进行统计建模,该公式考虑了特征之间的相关性,并计算了犯罪嫌疑人可比性的总体组合似然比(LR) 。但是,由于对MVKDLR的鲁棒性(特别是其计算上的弱点和数值不稳定性)的关注,特别是当使用大量特征时,开发了主成分分析核密度似然比(PCAKDLR)方法作为替代方法。在这项研究中,使用蒙特卡罗模拟的合成数据,根据从长发元音/ e:/发出的自发语音段中提取的16阶梅尔频率倒谱系数,研究和比较了这两种方法的性能。 118位日语为母语的日本男性。根据有效性(=准确性)和可靠性(=精度)评估绩效,对数似然比成本(C_(llr))用于评估有效性,而95%可信区间(95%CI)用于评估可靠性。

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