Wednesday, August 23, 2023
AI Assistance In Legal Analysis: An Empirical Study
Jonathan H. Choi (USC; Google Scholar) & Daniel Schwarcz (Minnesota; Google Scholar), AI Assistance in Legal Analysis: An Empirical Study:
Can artificial intelligence (AI) augment human legal reasoning? To find out, we designed a novel experiment administering law school exams to students with and without access to GPT-4, the best-performing AI model currently available. We found that assistance from GPT-4 significantly enhanced performance on simple multiple-choice questions but not on complex essay questions. We also found that GPT-4’s impact depended heavily on the student’s starting skill level; students at the bottom of the class saw huge performance gains with AI assistance, while students at the top of the class saw performance declines. This suggests that AI may have an equalizing effect on the legal profession, mitigating inequalities between elite and nonelite lawyers. In addition, we graded exams written by GPT-4 alone to compare it with humans alone and AI-assisted humans.
We found that GPT-4’s performance varied substantially depending on prompting methodology. With basic prompts, GPT-4 was a mediocre student, but with optimal prompting it outperformed both the average student and the average student with access to AI. This finding has important implications for the future of work, hinting that it may become advantageous to entirely remove humans from the loop for certain tasks.
https://taxprof.typepad.com/taxprof_blog/2023/08/ai-assistance-in-legal-analysis-an-empirical-study.html