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Main Authors: Murthy, Ashwin, Krishnamaneni, Ramesh, Chacon, Sean, Carlson, Kelsey, Naik, Ranjita
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.17745
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author Murthy, Ashwin
Krishnamaneni, Ramesh
Chacon, Sean
Carlson, Kelsey
Naik, Ranjita
author_facet Murthy, Ashwin
Krishnamaneni, Ramesh
Chacon, Sean
Carlson, Kelsey
Naik, Ranjita
contents Prior studies on the effectiveness of professional jury consultants in predicting juror proclivities have yielded mixed results, and few have rigorously evaluated consultant performance against chance under controlled conditions. This study addresses that gap by empirically assessing whether jury consultants can reliably predict juror predispositions beyond chance levels and whether supervised machine-learning (ML) models can outperform consultant predictions. Using data from N mock jurors who completed pre-trial attitudinal questionnaires and rendered verdicts in a standardized wrongful-termination case, we compared predictions made by professional jury consultants with those generated by Random Forest (RF) and k-Nearest Neighbors (KNN) classifiers. Model and consultant predictions were evaluated on a held-out test set using paired statistical tests and nonparametric bootstrap procedures. We find that supervised ML models significantly outperform professional jury consultants under identical informational constraints, while offering greater transparency, replicability, and auditability. These results provide an empirical benchmark for evaluating human judgment in jury selection and inform ongoing debates about the role of data-driven decision support in legal contexts. To support reproducibility and auditability, all code and data will be made publicly available upon publication.
format Preprint
id arxiv_https___arxiv_org_abs_2601_17745
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Predicting Juror Predisposition Using Machine Learning: A Comparative Study of Human and Algorithmic Jury Selection
Murthy, Ashwin
Krishnamaneni, Ramesh
Chacon, Sean
Carlson, Kelsey
Naik, Ranjita
Computers and Society
Prior studies on the effectiveness of professional jury consultants in predicting juror proclivities have yielded mixed results, and few have rigorously evaluated consultant performance against chance under controlled conditions. This study addresses that gap by empirically assessing whether jury consultants can reliably predict juror predispositions beyond chance levels and whether supervised machine-learning (ML) models can outperform consultant predictions. Using data from N mock jurors who completed pre-trial attitudinal questionnaires and rendered verdicts in a standardized wrongful-termination case, we compared predictions made by professional jury consultants with those generated by Random Forest (RF) and k-Nearest Neighbors (KNN) classifiers. Model and consultant predictions were evaluated on a held-out test set using paired statistical tests and nonparametric bootstrap procedures. We find that supervised ML models significantly outperform professional jury consultants under identical informational constraints, while offering greater transparency, replicability, and auditability. These results provide an empirical benchmark for evaluating human judgment in jury selection and inform ongoing debates about the role of data-driven decision support in legal contexts. To support reproducibility and auditability, all code and data will be made publicly available upon publication.
title Predicting Juror Predisposition Using Machine Learning: A Comparative Study of Human and Algorithmic Jury Selection
topic Computers and Society
url https://arxiv.org/abs/2601.17745