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Analyzing recognition performance with sparse data
Authors:Ching-Fan Sheu  Yuh-Shiow Lee  Pei-Ying Shih
Affiliation:Department of Psychology, National Chung Cheng University, Chia-Yi, Taiwan. psycfs@ccu.edu.tw
Abstract:Experiments in which recognition performance is measured sometimes involve only a small number of observations per subject, rendering d' analysis unreliable (Schooler & Shiffrin, 2005). Here, we introduce, in signal detection models, subject-specific random variables to account for heterogeneous hit and false alarm rates among individuals. Population d' effects for comparing groups are estimated, in this approach, by pooling information from a sample of subjects across experimental conditions. The method is validated by a simulation study and is illustrated with an analysis of the effect of neutral and emotional words on recognition performance, employing the emotional Stroop task (Lee & Shih, 2007).
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