Assessing Verbal Eyewitness Confidence Statements Using Natural Language Processing.

Journal: Psychological science
PMID:

Abstract

After an eyewitness completes a lineup, officers are advised to ask witnesses how confident they are in their identification. Although researchers in the lab typically study eyewitness confidence numerically, confidence in the field is primarily gathered verbally. In the current study, we used a natural language-processing approach to develop an automated model to classify verbal eyewitness confidence statements. Across a variety of stimulus materials and witnessing conditions, our model correctly classified adult witnesses' ( = 4,541) level of confidence (i.e., high, medium, or low) 71% of the time. Confidence-accuracy calibration curves demonstrate that the model's confidence classification performs similarly in predicting eyewitness accuracy compared to witnesses' self-reported numeric confidence. Our model also furnishes a new metric, , that measures the vagueness of witnesses' confidence statements and provides independent information about eyewitness accuracy. These results have implications for how empirical scientists collect confidence data and how police interpret eyewitness confidence statements.

Authors

  • Rachel Leigh Greenspan
    Department of Criminal Justice and Legal Studies, University of Mississippi.
  • Alex Lyman
    University of Pennsylvania Carey Law School.
  • Paul Heaton
    University of Pennsylvania Carey Law School.