AI assistance improves people's ability to distinguish correct from incorrect eyewitness lineup identifications. Journal Article uri icon

Overview

abstract

  • Mistaken eyewitness identification is one of the leading causes of false convictions. Improving law enforcement's ability to identify correct identifications could have profound implications for criminal justice. Across two experiments, we show that AI-assistance can improve people's ability to distinguish between accurate and inaccurate eyewitness lineup identifications. Participants (Experiment 1: N = 1,092, Experiment 2: N = 1,809) saw an eyewitness's lineup identification, accompanied by the eyewitness's verbal confidence statement (e.g., "I'm pretty sure") and either a featural ("I remember his eyes"), recognition ("I remember him"), or familiarity ("He looks familiar") justification. They then judged the accuracy of the eyewitness's identification. AI-assistance (vs. no assistance) improved people's ability to distinguish between correct identifications and misidentifications, but only when they evaluated lineup identifications based on recognition or featural justifications. Discrimination of identifications based on familiarity justifications showed little improvement with AI-assistance. This project is a critical step in evaluating human-algorithm interactions before widespread use of AI-assistance by law enforcement.

publication date

  • May 27, 2025

has restriction

  • hybrid

Date in CU Experts

  • May 31, 2025 11:30 AM

Full Author List

  • Kelso LE; Dobolyi DG; Grabman JH; Dodson CS

author count

  • 4

Other Profiles

Electronic International Standard Serial Number (EISSN)

  • 1091-6490

Additional Document Info

start page

  • e2503971122

volume

  • 122

issue

  • 21