Cohen Andrew L, Starns Jeffrey J, Rotello Caren M, Cataldo Andrea M
Department of Psychological and Brain Sciences, University of Massachusetts, Amherst, MA, 01003, USA.
McLean Hospital, Harvard Medical School, Belmont, MA, USA.
Cogn Res Princ Implic. 2020 May 13;5(1):21. doi: 10.1186/s41235-020-00219-4.
The majority of eyewitness lineup studies are laboratory-based. How well the conclusions of these studies, including the relationship between confidence and accuracy, generalize to real-world police lineups is an open question. Signal detection theory (SDT) has emerged as a powerful framework for analyzing lineups that allows comparison of witnesses' memory accuracy under different types of identification procedures. Because the guilt or innocence of a real-world suspect is generally not known, however, it is further unknown precisely how the identification of a suspect should change our belief in their guilt. The probability of guilt after the suspect has been identified, the posterior probability of guilt (PPG), can only be meaningfully estimated if we know the proportion of lineups that include a guilty suspect, P(guilty). Recent work used SDT to estimate P(guilty) on a single empirical data set that shared an important property with real-world data; that is, no information about the guilt or innocence of the suspects was provided. Here we test the ability of the SDT model to recover P(guilty) on a wide range of pre-existing empirical data from more than 10,000 identification decisions. We then use simulations of the SDT model to determine the conditions under which the model succeeds and, where applicable, why it fails.
For both empirical and simulated studies, the model was able to accurately estimate P(guilty) when the lineups were fair (the guilty and innocent suspects did not stand out) and identifications of both suspects and fillers occurred with a range of confidence levels. Simulations showed that the model can accurately recover P(guilty) given data that matches the model assumptions. The model failed to accurately estimate P(guilty) under conditions that violated its assumptions; for example, when the effective size of the lineup was reduced, either because the fillers were selected to be poor matches to the suspect or because the innocent suspect was more familiar than the guilty suspect. The model also underestimated P(guilty) when a weapon was shown.
Depending on lineup quality, estimation of P(guilty) and, relatedly, PPG, from the SDT model can range from poor to excellent. These results highlight the need to carefully consider how the similarity relations between fillers and suspects influence identifications.
大多数目击证人列队辨认研究都是基于实验室进行的。这些研究的结论,包括信心与准确性之间的关系,在现实世界中的警方列队辨认中能在多大程度上适用,仍是一个悬而未决的问题。信号检测理论(SDT)已成为分析列队辨认的一个强大框架,它能对不同类型辨认程序下证人的记忆准确性进行比较。然而,由于现实世界中嫌疑人有罪与否通常未知,因此更确切地说,嫌疑人的辨认究竟应如何改变我们对其有罪的信念也尚不清楚。只有当我们知道包含有罪嫌疑人的列队辨认比例P(有罪)时,才能有意义地估计嫌疑人被辨认出后的有罪概率,即有罪后验概率(PPG)。最近的研究使用SDT在一个与现实世界数据具有重要共同特征的单一实证数据集上估计P(有罪);也就是说,没有提供关于嫌疑人有罪或无罪的信息。在此,我们测试SDT模型在来自10000多个辨认决策的广泛现有实证数据上恢复P(有罪)的能力。然后,我们使用SDT模型的模拟来确定模型成功的条件,并在适用的情况下确定其失败的原因。
对于实证研究和模拟研究而言,当列队公平时(有罪和无罪嫌疑人没有突出特征),且嫌疑人和陪衬人的辨认都在一定范围内的信心水平下发生时,该模型能够准确估计P(有罪)。模拟表明,给定与模型假设匹配的数据时,该模型能够准确恢复P(有罪)。在违反其假设的条件下,该模型无法准确估计P(有罪);例如,当列队的有效规模减小,要么是因为陪衬人被选为与嫌疑人不匹配,要么是因为无罪嫌疑人比有罪嫌疑人更熟悉时。当展示武器时,该模型也低估了P(有罪)。
根据列队质量,从SDT模型估计P(有罪)以及相关的PPG,其结果可能从很差到很好不等。这些结果凸显了需要仔细考虑陪衬人与嫌疑人之间的相似关系如何影响辨认。