Large language models are transforming the legal domain by enabling novel applications in legal text processing, case retrieval and analysis, education, and legal practice, while also posing challenges related to biases, hallucination, and alignment with fundamental legal values.
Creating a dataset for multi-jurisdictional common law court judgment summarization and evaluating the performance of various models.
SaulLM-7B is a groundbreaking large language model specifically designed for legal text comprehension and generation, offering state-of-the-art proficiency in processing legal documents.
SimuCourt introduces a benchmark for evaluating judicial decision-making agents and proposes a multi-agent framework, AgentsCourt, to simulate court processes.
AI-generated summaries improve public understanding and accessibility of court opinions.
Achieving legal autonomy for AI agents through interoperable and explainable methods using large language models, expert systems, and Bayesian networks.
Introducing DELTA, a discriminative model for legal case retrieval, focusing on key facts for improved relevance determination.
Using large language models for automated relevance judgments in legal case retrieval.
GPTs' performance in cross-lingual legal QA scenarios.
Maximizing retrieval accuracy through multi-phase approach with large language models.