Title of article
Eyewitness identification discriminability: ROC analysis versus logistic regression
Author/Authors
Gronlund، نويسنده , , Scott D. and Neuschatz، نويسنده , , Jeffrey S.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
4
From page
54
To page
57
Abstract
To reach conclusions regarding the respective accuracy of two conditions, eyewitness researchers evaluate correct and false identification rates computed across participants. Two approaches typically are employed. One approach relies on ratio-based probative value measures; but Wixted and Mickes (2012) and Gronlund, Wixted, and Mickes (2014) showed that these measures fail to disentangle an assessment of accuracy (i.e., discriminability between guilty and innocent suspects) from response bias (i.e., a willingness to make a response). Our focus is on a second approach, logistic regression analyses of the correct and of the false identification rates. Logistic regression also fails to disentangle discriminability from bias. Therefore, it only can denote the most accurate condition in limited circumstances. The best approach for reaching the proper conclusion regarding which condition is most accurate is to use receiver operator characteristic (ROC) analysis. Simulated ROC data illustrate the problem with a reliance on logistic regression to assess accuracy.
Keywords
Eyewitness identification , logistic regression , signal detection theory , Probative value measures , ROC analysis
Journal title
Journal of Applied Research in Memory and Cognition
Serial Year
2014
Journal title
Journal of Applied Research in Memory and Cognition
Record number
2232039
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