A Survey on Large Language Models for Critical Societal Domains: Finance, Healthcare, and Law
In the fast-evolving domain of artificial intelligence, large language models (LLMs) such as GPT-3 and GPT-4 are revolutionizing the landscapes of finance, healthcare, and law: domains characterized by their reliance on professional expertise, challenging data acquisition, high-stakes, and stringent...
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Zusammenfassung: | In the fast-evolving domain of artificial intelligence, large language models
(LLMs) such as GPT-3 and GPT-4 are revolutionizing the landscapes of finance,
healthcare, and law: domains characterized by their reliance on professional
expertise, challenging data acquisition, high-stakes, and stringent regulatory
compliance. This survey offers a detailed exploration of the methodologies,
applications, challenges, and forward-looking opportunities of LLMs within
these high-stakes sectors. We highlight the instrumental role of LLMs in
enhancing diagnostic and treatment methodologies in healthcare, innovating
financial analytics, and refining legal interpretation and compliance
strategies. Moreover, we critically examine the ethics for LLM applications in
these fields, pointing out the existing ethical concerns and the need for
transparent, fair, and robust AI systems that respect regulatory norms. By
presenting a thorough review of current literature and practical applications,
we showcase the transformative impact of LLMs, and outline the imperative for
interdisciplinary cooperation, methodological advancements, and ethical
vigilance. Through this lens, we aim to spark dialogue and inspire future
research dedicated to maximizing the benefits of LLMs while mitigating their
risks in these precision-dependent sectors. To facilitate future research on
LLMs in these critical societal domains, we also initiate a reading list that
tracks the latest advancements under this topic, which will be continually
updated: \url{https://github.com/czyssrs/LLM_X_papers}. |
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DOI: | 10.48550/arxiv.2405.01769 |