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列队记忆模型。

Models of lineup memory.

作者信息

Wixted John T, Vul Edward, Mickes Laura, Wilson Brent M

机构信息

Department of Psychology, University of California, San Diego, United States.

Department of Psychology, University of California, San Diego, United States.

出版信息

Cogn Psychol. 2018 Sep;105:81-114. doi: 10.1016/j.cogpsych.2018.06.001. Epub 2018 Jul 19.

Abstract

Face recognition memory is often tested by the police using a photo lineup, which consists of one suspect, who is either innocent or guilty, and five or more physically similar fillers, all of whom are known to be innocent. For many years, lineups were investigated in lab studies without guidance from standard models of recognition memory. More recently, signal detection theory has been used to conceptualize lineup memory and to motivate receiver operating characteristic (ROC) analysis of lineup performance. Here, we describe three competing signal-detection models of lineup memory, derive their likelihood functions, and fit them to empirical ROC data. We also introduce the notion that memory signals generated by the faces in a lineup are likely to be correlated because, by design, those faces share features. The models we investigate differ in their predictions about the effect that correlated memory signals should have on the ability to discriminate innocent from guilty suspects. A popular compound signal detection model known as the Integration model predicts that correlated memory signals should impair discriminability. Empirically, this model performed so poorly that, going forward, it should probably be abandoned. The best-fitting model incorporates a principle known as "ensemble coding," which predicts that correlated memory signals should enhance discriminability. The ensemble model aligns with a previously proposed theory of eyewitness identification according to which the simultaneous presentation of faces in a lineup enhances discriminability compared to when faces are presented in isolation because it permits eyewitnesses to detect and discount non-diagnostic facial features.

摘要

警方经常使用照片列队辨认来测试面部识别记忆,该列队由一名嫌疑人(可能有罪也可能无罪)和五个或更多外貌相似的陪衬人组成,所有陪衬人都已知是无辜的。多年来,在没有识别记忆标准模型指导的情况下,实验室研究对列队辨认进行了调查。最近,信号检测理论已被用于将列队辨认记忆概念化,并推动对列队辨认表现进行接受者操作特征(ROC)分析。在此,我们描述了三种相互竞争的列队辨认记忆信号检测模型,推导了它们的似然函数,并将其与经验ROC数据进行拟合。我们还提出了这样一种观点,即列队中面孔产生的记忆信号可能是相关的,因为按照设计,这些面孔具有共同特征。我们研究的模型在相关记忆信号对区分无辜与有罪嫌疑人能力的影响预测上存在差异。一种广为人知的复合信号检测模型,即整合模型,预测相关记忆信号会损害辨别力。从经验上看,该模型表现很差,因此今后可能应该被摒弃。拟合度最佳的模型纳入了一种称为“整体编码”的原则,该原则预测相关记忆信号会增强辨别力。整体模型与先前提出的目击证人识别理论一致,根据该理论,与单独呈现面孔相比,列队中面孔的同时呈现会增强辨别力,因为它使目击证人能够检测并忽略非诊断性面部特征。

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