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Automated systems are crucial for summarizing medical information. Large Language Models (LLMs) show promise in healthcare, specifically for Closed-Book Generative QnA. This study compares general and medical-specific LMs, evaluates their performance in medical Q&A, and provides insights into their suitability for medical applications.

JayJhaveri1906/CSE291_MedLM

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MedLM: Exploring Language Models for Medical Question Answering System

Paper Link: here

Abstract

In the face of rapidly expanding online medical literature, automated systems for aggregating and summarizing information are becoming increasingly crucial for healthcare professionals and patients. Large Language Models (LLMs), with their advanced generative capabilities, have shown promise in various NLP tasks, and their potential in the healthcare domain, particularly for Closed-Book Generative QnA, is significant. However, the performance of these models in domain-specific tasks such as medical Q&A remains largely unexplored. This study aims to fill this gap by comparing the performance of general and medical-specific distilled LMs for medical Q&A. We aim to evaluate the effectiveness of fine-tuning domain-specific LMs and compare the performance of different families of Language Models. The study will address critical questions about these models' reliability, comparative performance, and effectiveness in the context of medical Q&A. The findings will provide valuable insights into the suitability of different LMs for specific applications in the medical domain.

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Read our report that explains the motivation, entire process we used, and everything in detail here

For a brief overview, refer our ppt here

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Automated systems are crucial for summarizing medical information. Large Language Models (LLMs) show promise in healthcare, specifically for Closed-Book Generative QnA. This study compares general and medical-specific LMs, evaluates their performance in medical Q&A, and provides insights into their suitability for medical applications.

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