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Main Authors: Huang, Jia-Hong, Yang, Chao-Chun, Shen, Yixian, Pacces, Alessio M., Kanoulas, Evangelos
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.19041
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author Huang, Jia-Hong
Yang, Chao-Chun
Shen, Yixian
Pacces, Alessio M.
Kanoulas, Evangelos
author_facet Huang, Jia-Hong
Yang, Chao-Chun
Shen, Yixian
Pacces, Alessio M.
Kanoulas, Evangelos
contents The legal landscape encompasses a wide array of lawsuit types, presenting lawyers with challenges in delivering timely and accurate information to clients, particularly concerning critical aspects like potential imprisonment duration or financial repercussions. Compounded by the scarcity of legal experts, there's an urgent need to enhance the efficiency of traditional legal workflows. Recent advances in deep learning, especially Large Language Models (LLMs), offer promising solutions to this challenge. Leveraging LLMs' mathematical reasoning capabilities, we propose a novel approach integrating LLM-based methodologies with specially designed prompts to address precision requirements in legal Artificial Intelligence (LegalAI) applications. The proposed work seeks to bridge the gap between traditional legal practices and modern technological advancements, paving the way for a more accessible, efficient, and equitable legal system. To validate this method, we introduce a curated dataset tailored to precision-oriented LegalAI tasks, serving as a benchmark for evaluating LLM-based approaches. Extensive experimentation confirms the efficacy of our methodology in generating accurate numerical estimates within the legal domain, emphasizing the role of LLMs in streamlining legal processes and meeting the evolving demands of LegalAI.
format Preprint
id arxiv_https___arxiv_org_abs_2407_19041
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Optimizing Numerical Estimation and Operational Efficiency in the Legal Domain through Large Language Models
Huang, Jia-Hong
Yang, Chao-Chun
Shen, Yixian
Pacces, Alessio M.
Kanoulas, Evangelos
Artificial Intelligence
Computation and Language
The legal landscape encompasses a wide array of lawsuit types, presenting lawyers with challenges in delivering timely and accurate information to clients, particularly concerning critical aspects like potential imprisonment duration or financial repercussions. Compounded by the scarcity of legal experts, there's an urgent need to enhance the efficiency of traditional legal workflows. Recent advances in deep learning, especially Large Language Models (LLMs), offer promising solutions to this challenge. Leveraging LLMs' mathematical reasoning capabilities, we propose a novel approach integrating LLM-based methodologies with specially designed prompts to address precision requirements in legal Artificial Intelligence (LegalAI) applications. The proposed work seeks to bridge the gap between traditional legal practices and modern technological advancements, paving the way for a more accessible, efficient, and equitable legal system. To validate this method, we introduce a curated dataset tailored to precision-oriented LegalAI tasks, serving as a benchmark for evaluating LLM-based approaches. Extensive experimentation confirms the efficacy of our methodology in generating accurate numerical estimates within the legal domain, emphasizing the role of LLMs in streamlining legal processes and meeting the evolving demands of LegalAI.
title Optimizing Numerical Estimation and Operational Efficiency in the Legal Domain through Large Language Models
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2407.19041