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Main Authors: Yi, Gyeong Hoon, Choi, Jiwoo, Song, Hyeongyun, Miano, Olivia, Choi, Jaewoong, Bang, Kihoon, Lee, Byungju, Sohn, Seok Su, Buttler, David, Hiszpanski, Anna, Han, Sang Soo, Kim, Donghun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.05431
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author Yi, Gyeong Hoon
Choi, Jiwoo
Song, Hyeongyun
Miano, Olivia
Choi, Jaewoong
Bang, Kihoon
Lee, Byungju
Sohn, Seok Su
Buttler, David
Hiszpanski, Anna
Han, Sang Soo
Kim, Donghun
author_facet Yi, Gyeong Hoon
Choi, Jiwoo
Song, Hyeongyun
Miano, Olivia
Choi, Jaewoong
Bang, Kihoon
Lee, Byungju
Sohn, Seok Su
Buttler, David
Hiszpanski, Anna
Han, Sang Soo
Kim, Donghun
contents Efficiently extracting data from tables in the scientific literature is pivotal for building large-scale databases. However, the tables reported in materials science papers exist in highly diverse forms; thus, rule-based extractions are an ineffective approach. To overcome this challenge, we present MaTableGPT, which is a GPT-based table data extractor from the materials science literature. MaTableGPT features key strategies of table data representation and table splitting for better GPT comprehension and filtering hallucinated information through follow-up questions. When applied to a vast volume of water splitting catalysis literature, MaTableGPT achieved an extraction accuracy (total F1 score) of up to 96.8%. Through comprehensive evaluations of the GPT usage cost, labeling cost, and extraction accuracy for the learning methods of zero-shot, few-shot and fine-tuning, we present a Pareto-front mapping where the few-shot learning method was found to be the most balanced solution owing to both its high extraction accuracy (total F1 score>95%) and low cost (GPT usage cost of 5.97 US dollars and labeling cost of 10 I/O paired examples). The statistical analyses conducted on the database generated by MaTableGPT revealed valuable insights into the distribution of the overpotential and elemental utilization across the reported catalysts in the water splitting literature.
format Preprint
id arxiv_https___arxiv_org_abs_2406_05431
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MaTableGPT: GPT-based Table Data Extractor from Materials Science Literature
Yi, Gyeong Hoon
Choi, Jiwoo
Song, Hyeongyun
Miano, Olivia
Choi, Jaewoong
Bang, Kihoon
Lee, Byungju
Sohn, Seok Su
Buttler, David
Hiszpanski, Anna
Han, Sang Soo
Kim, Donghun
Computation and Language
Efficiently extracting data from tables in the scientific literature is pivotal for building large-scale databases. However, the tables reported in materials science papers exist in highly diverse forms; thus, rule-based extractions are an ineffective approach. To overcome this challenge, we present MaTableGPT, which is a GPT-based table data extractor from the materials science literature. MaTableGPT features key strategies of table data representation and table splitting for better GPT comprehension and filtering hallucinated information through follow-up questions. When applied to a vast volume of water splitting catalysis literature, MaTableGPT achieved an extraction accuracy (total F1 score) of up to 96.8%. Through comprehensive evaluations of the GPT usage cost, labeling cost, and extraction accuracy for the learning methods of zero-shot, few-shot and fine-tuning, we present a Pareto-front mapping where the few-shot learning method was found to be the most balanced solution owing to both its high extraction accuracy (total F1 score>95%) and low cost (GPT usage cost of 5.97 US dollars and labeling cost of 10 I/O paired examples). The statistical analyses conducted on the database generated by MaTableGPT revealed valuable insights into the distribution of the overpotential and elemental utilization across the reported catalysts in the water splitting literature.
title MaTableGPT: GPT-based Table Data Extractor from Materials Science Literature
topic Computation and Language
url https://arxiv.org/abs/2406.05431