Finding the perfect match: Fingerprint expertise facilitates statistical learning and visual comparison decision-making
Number of pages
SourceJournal of Experimental Psychology: Applied, 29, 2, (2023), pp. 386-397
Article / Letter to editor
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SW OZ BSI KLP
Journal of Experimental Psychology: Applied
SubjectExperimental Psychopathology and Treatment
Forensic feature-comparison examiners compare - or "match" - evidence samples (e.g., fingerprints) to provide judgments about the source of the evidence. Research demonstrates that examiners in select disciplines possess expertise in this task by outperforming novices - yet the psychological mechanisms underpinning this expertise are unclear. This article investigates one implicated mechanism: statistical learning, the ability to learn how often things occur in the environment. This ability is likely important in forensic decision-making as samples sharing rarer statistical information are more likely to come from the same source than those sharing more common information. We investigated 46 fingerprint examiners' and 52 novices' statistical learning of fingerprint categories and application of this knowledge in a source-likelihood judgment task. Participants completed four measures of their statistical learning (frequency discrimination judgments, bounded and unbounded frequency estimates, and source-likelihood judgments) before and after familiarization to the "ground-truth" category frequencies. Compared to novices, fingerprint examiners had superior domain-specific statistical learning across all measures - both before and after familiarization. This suggests that fingerprint expertise facilitates domain-specific statistical learning - something that has important theoretical and applied implications for the development of training programs and statistical databases in forensic science.
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- Academic publications 
- Faculty of Social Sciences 
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