LLMs & Legal Aid: Understanding Legal Needs Exhibited Through User Queries

Autor: Kuk, Michal, Harasta, Jakub
Rok vydání: 2025
Předmět:
Druh dokumentu: Working Paper
Popis: The paper presents a preliminary analysis of an experiment conducted by Frank Bold, a Czech expert group, to explore user interactions with GPT-4 for addressing legal queries. Between May 3, 2023, and July 25, 2023, 1,252 users submitted 3,847 queries. Unlike studies that primarily focus on the accuracy, factuality, or hallucination tendencies of large language models (LLMs), our analysis focuses on the user query dimension of the interaction. Using GPT-4o for zero-shot classification, we categorized queries on (1) whether users provided factual information about their issue (29.95%) or not (70.05%), (2) whether they sought legal information (64.93%) or advice on the course of action (35.07\%), and (3) whether they imposed requirements to shape or control the model's answer (28.57%) or not (71.43%). We provide both quantitative and qualitative insight into user needs and contribute to a better understanding of user engagement with LLMs.
Comment: Accepted at AI for Access to Justice Workshop at Jurix 2024, Brno, Czechia
Databáze: arXiv