4.5 Article

Adjusted binary classification (ABC) model in forensic science: An example on sex classification from handprint dimensions

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FORENSIC SCIENCE INTERNATIONAL
卷 320, 期 -, 页码 -

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ELSEVIER IRELAND LTD
DOI: 10.1016/j.forsciint.2021.110709

关键词

Binary classification; Discriminant analysis; Posterior probability; Forensic science; Handprints

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The study introduced a novel Adjusted binary classification (ABC) algorithm that could improve the accuracy of classification in forensic settings while reducing the possibility of incorrect classifications. The experimental results showed that the ABC models achieved accuracy of 95% or above in both the training and testing samples, effectively classifying specimens with specific posterior probability cut-off thresholds for each group.
Binary classification techniques are commonly used in forensic examination to test if a specimen belongs to a particular group and base the expert opinion on the questioned evidence. However, most of the currently used methods do not achieve sufficient accuracy due to the ignoring of the specimens classified in the overlapping area. To address the issue, we proposed a novel Adjusted binary classification (ABC) algorithm that automatically adjusts posterior probabilities to reach classification accuracy and positive/ negative predicted values (PPV, NPV) of 95 %. In the presented example, we used three handprint measurements from 160 participants (80 males and 80 females) to develop models that would classify sex from their dimensions. The sample was split into the training/cross-validated (70 %) and testing sample (30 %). We developed four classification models using linear discriminant analysis (LDA) by employing traditional single cut-off values and ABC approach that for each group provides a specific posterior probability cut-off threshold. In the cross-validated sample, the accuracy of traditional models was 78.7-92.5 %, while PPVs/NPVs ranged between 78.2 and 93 %. ABC models provided 95 % accuracy, PPV, and NPV, and could classify 35.5-88.1 % of specimens. In the testing sample, ABC models achieved accuracy of 97.3-100 %, PPV/NPV 95.4-100 %, and could be applied to 29.1-87.5 % of specimens. The study demonstrated that the ABC approach could adjust classification models to reach predefined values of accuracy, PPV, and NPV. Therefore, it could be an efficient tool for conducting a binary classification in forensic settings and minimizing the possibilities of incorrect classifications. (c) 2021 Elsevier B.V. All rights reserved.

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