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Main Authors: Antony, Blessy, Dutta, Amartya, Aggarwal, Sneha, Gatne, Vasu, Gökdemir, Ozan, Grimes, Samantha, Lauring, Adam, Wasik, Brian R., Karpatne, Anuj, Murali, T. M.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.23849
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author Antony, Blessy
Dutta, Amartya
Aggarwal, Sneha
Gatne, Vasu
Gökdemir, Ozan
Grimes, Samantha
Lauring, Adam
Wasik, Brian R.
Karpatne, Anuj
Murali, T. M.
author_facet Antony, Blessy
Dutta, Amartya
Aggarwal, Sneha
Gatne, Vasu
Gökdemir, Ozan
Grimes, Samantha
Lauring, Adam
Wasik, Brian R.
Karpatne, Anuj
Murali, T. M.
contents The lack of high-quality ground truth datasets to train machine learning (ML) models impedes the potential of artificial intelligence (AI) for science research. Scientific information extraction (SIE) from the literature using LLMs is emerging as a powerful approach to automate the creation of these datasets. However, existing LLM-based approaches and benchmarking studies for SIE focus on broad topics such as biomedicine and chemistry, are limited to choice-based tasks, and focus on extracting information from short and well-formatted text. The potential of SIE methods in complex, open-ended tasks is considerably under-explored. In this study, we used a domain that has been virtually ignored in SIE, namely virology, to address these research gaps. We design a unique, open-ended SIE task of extracting mutations in a given virus that modify its interaction with the host. We develop a new, multi-step retrieval augmented generation (RAG) framework called VILLA for SIE. In parallel, we curate a novel dataset of 629 mutations in ten influenza A virus proteins obtained from 239 scientific publications to serve as ground truth for the mutation extraction task. Finally, we demonstrate VILLA's superior performance using a novel and comprehensive evaluation and comparison with vanilla RAG and other state-of-the art RAG- and agent-based tools for SIE.
format Preprint
id arxiv_https___arxiv_org_abs_2603_23849
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle VILLA: Versatile Information Retrieval From Scientific Literature Using Large LAnguage Models
Antony, Blessy
Dutta, Amartya
Aggarwal, Sneha
Gatne, Vasu
Gökdemir, Ozan
Grimes, Samantha
Lauring, Adam
Wasik, Brian R.
Karpatne, Anuj
Murali, T. M.
Information Retrieval
The lack of high-quality ground truth datasets to train machine learning (ML) models impedes the potential of artificial intelligence (AI) for science research. Scientific information extraction (SIE) from the literature using LLMs is emerging as a powerful approach to automate the creation of these datasets. However, existing LLM-based approaches and benchmarking studies for SIE focus on broad topics such as biomedicine and chemistry, are limited to choice-based tasks, and focus on extracting information from short and well-formatted text. The potential of SIE methods in complex, open-ended tasks is considerably under-explored. In this study, we used a domain that has been virtually ignored in SIE, namely virology, to address these research gaps. We design a unique, open-ended SIE task of extracting mutations in a given virus that modify its interaction with the host. We develop a new, multi-step retrieval augmented generation (RAG) framework called VILLA for SIE. In parallel, we curate a novel dataset of 629 mutations in ten influenza A virus proteins obtained from 239 scientific publications to serve as ground truth for the mutation extraction task. Finally, we demonstrate VILLA's superior performance using a novel and comprehensive evaluation and comparison with vanilla RAG and other state-of-the art RAG- and agent-based tools for SIE.
title VILLA: Versatile Information Retrieval From Scientific Literature Using Large LAnguage Models
topic Information Retrieval
url https://arxiv.org/abs/2603.23849