A taxometric approach to base-rate estimation and idiographic classification in psycholegal research.

IF 2.4 2区 社会学 Q1 LAW
Dario N Rodriguez, David M Zimmerman
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引用次数: 0

Abstract

Objectives: Taxometric analysis employs multiple, nonoverlapping statistical procedures to estimate parameters that characterize latent categories (e.g., base rates). Consistency among these estimates can inform substantive inferences about latent variables and facilitate idiographic classification. We provide a sketch of a taxometric research program to estimate guilty-suspect base rates in criminal justice and legal systems and use this sketch to explore the possible benefits of taxometric investigations for science and public policy.

Hypotheses: We investigated whether taxometric analysis can accurately estimate base rates and facilitate idiographic classifications under conditions psycholegal researchers might face.

Method: We demonstrate taxometric analysis on simulated data to detect latent categories, estimate their base rates, and classify individual cases.

Results: Our simulations show that taxometric analysis can accurately estimate taxon base rates. Specifically, estimated base rates differed from simulated base rates by less than 3%. Further, idiographic classification rules derived from taxometric analysis accurately classified individual cases in additional data sets, with positive predictive values and negative predictive values exceeding .85.

Conclusions: If legal categories of interest represent nonarbitrary classes, taxometric methods afford an analytic approach by which researchers can use fallible indicator variables to estimate their base rates and develop algorithms for legal classification. We discuss potential objections to the taxometric approach and identify important avenues for future research and development in psycholegal applications of taxometric methods. (PsycInfo Database Record (c) 2022 APA, all rights reserved).

心理研究中基本比率估计和具体分类的分类方法。
目的:分类分析采用多个不重叠的统计程序来估计表征潜在类别的参数(例如,基础比率)。这些估计之间的一致性可以为潜在变量的实质性推论提供信息,并促进具体分类。我们提供了一个分类研究计划的草图,以估计刑事司法和法律系统中的犯罪嫌疑人基本比率,并使用这个草图来探索分类调查对科学和公共政策的可能好处。假设:我们调查了在心理研究者可能面临的条件下,分类分析是否能准确地估计基本比率并促进具体分类。方法:对模拟数据进行分类分析,以检测潜在类别,估计其基本率,并对个体病例进行分类。结果:模拟结果表明,分类计量分析可以准确地估计分类群的基本比率。具体来说,估计的基本费率与模拟的基本费率相差不到3%。此外,从分类分析中得出的具体分类规则在其他数据集中准确地分类了个体病例,阳性预测值和阴性预测值均超过0.85。结论:如果感兴趣的法律类别代表非任意类别,分类方法提供了一种分析方法,研究人员可以使用不可靠的指标变量来估计其基本比率并开发法律分类算法。我们讨论了对分类方法的潜在反对意见,并确定了分类方法在心理法律应用方面的未来研究和发展的重要途径。(PsycInfo Database Record (c) 2022 APA,版权所有)。
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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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