Automated question type coding of forensic interviews and trial testimony in child sexual abuse cases.

IF 2.4 2区 社会学 Q1 LAW
Zsofia A Szojka, Suvimal Yashraj, Thomas D Lyon
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引用次数: 0

Abstract

Objective: Question-type classification is widely used as a measure of interview quality. However, question-type coding is a time-consuming process when performed by manual coders. Reliable automated question-type coding approaches would facilitate the assessment of the quality of forensic interviews and court testimony involving victims of child abuse.

Hypotheses: We expected that the reliability achieved by the automated model would be comparable to manual coders.

Method: We examined whether a large language model (Robustly Optimized Bidirectional Encoder Representations from Transformers Approach) trained on questions (N = 351,920) asked in forensic interviews (n = 1,435) and trial testimony (n = 416) involving 3- to 17-year-old alleged victims of child sexual abuse could distinguish among (a) invitations, (b) wh-questions, (c) option-posing questions, and (d) nonquestions.

Results: The model achieved high reliability (95% agreement; κ = .93). To determine whether disagreements were due to machine or manual errors, we recoded inconsistencies between the machine and manual codes. Manual coders erred more often than the machine, particularly by overlooking invitations and nonquestions. Correcting errors in the manual codes further increased the model's reliability (98% agreement; κ = .97).

Conclusions: Automated question-type coding can provide a time-efficient and highly accurate alternative to manual coding. We have made the trained model publicly available for use by researchers and practitioners. (PsycInfo Database Record (c) 2025 APA, all rights reserved).

对儿童性虐待案件中的法医访谈和审判证词进行自动问题类型编码。
目的:问题类型分类被广泛用作衡量访谈质量的标准。然而,由人工编码人员进行问题类型编码是一个耗时的过程。可靠的自动问题类型编码方法将有助于评估涉及虐童受害者的法医访谈和法庭证词的质量:我们预计自动模型所达到的可靠性将与人工编码人员相当:我们研究了一个大型语言模型(来自变换器方法的稳健优化双向编码器表征)能否区分(a)邀请问题、(b)问题、(c)选项问题和(d)非问题:该模型具有很高的可靠性(95% 的一致性;κ = .93)。为了确定分歧是由于机器错误还是人工错误造成的,我们对机器和人工编码之间的不一致进行了重新编码。人工编码者比机器编码者更经常出错,尤其是忽略了邀请和非问题。纠正人工编码中的错误进一步提高了模型的可靠性(98% 的一致性;κ = .97):结论:自动问题类型编码可以提供一种既省时省力又高度准确的方法来替代人工编码。我们已将训练有素的模型公之于众,供研究人员和从业人员使用。(PsycInfo 数据库记录 (c) 2025 APA,保留所有权利)。
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来源期刊
CiteScore
4.50
自引率
8.00%
发文量
42
期刊介绍: Law and Human Behavior, the official journal of the American Psychology-Law Society/Division 41 of the American Psychological Association, is a multidisciplinary forum for the publication of articles and discussions of issues arising out of the relationships between human behavior and the law, our legal system, and the legal process. This journal publishes original research, reviews of past research, and theoretical studies from professionals in criminal justice, law, psychology, sociology, psychiatry, political science, education, communication, and other areas germane to the field.
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