The content discusses the importance of human-centered AI in the field of legal text analytics, focusing on the integration of human expertise with Large Language Models (LLMs). It explores how this integration can improve legal research, automate legal analytics tasks, and speed up justice delivery. The article highlights the challenges faced by existing generative AI models in the legal domain due to low trustworthiness and lack of specialized datasets. It proposes a novel dataset and a compound AI system that incorporates human inputs to enhance performance in Legal Text Analytics (LTA) tasks. The paper delves into various tasks such as case similarity, judgment summarization, petition drafting, question answering, and text-to-SQL generation in the context of Indian legal systems. It emphasizes the need for reliable and trustworthy summarization methods to make complex legal documents understandable to a wider audience. The article also suggests leveraging LLMs pre-trained on Indian legal data for better performance in specific legal tasks.
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by Sudipto Ghos... alle arxiv.org 03-19-2024
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