Legal Case

Research on legal case analysis focuses on automating tasks like case summarization, outcome prediction, and precedent identification to improve efficiency and access to justice. Current efforts leverage large language models (LLMs) and transformer architectures, often combined with techniques like topic modeling, citation network analysis, and domain-specific models, to analyze legal text and extract key information. These advancements aim to assist legal professionals by streamlining research, improving decision-making, and potentially mitigating biases in legal processes. The resulting tools and datasets are contributing significantly to the field of legal NLP and have implications for both legal practice and legal scholarship.

Papers