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Main Authors: Hua, Jialin, Luo, Liangqing, Ping, Weiying, Liao, Yan, Tao, Chunhai, Lub, Xuewen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.10758
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author Hua, Jialin
Luo, Liangqing
Ping, Weiying
Liao, Yan
Tao, Chunhai
Lub, Xuewen
author_facet Hua, Jialin
Luo, Liangqing
Ping, Weiying
Liao, Yan
Tao, Chunhai
Lub, Xuewen
contents Open information extraction (OIE) aims to extract surface relations and their corresponding arguments from natural language text, irrespective of domain. This paper presents an innovative OIE model, APRCOIE, tailored for Chinese text. Diverging from previous models, our model generates extraction patterns autonomously. The model defines a new pattern form for Chinese OIE and proposes an automated pattern generation methodology. In that way, the model can handle a wide array of complex and diverse Chinese grammatical phenomena. We design a preliminary filter based on tensor computing to conduct the extraction procedure efficiently. To train the model, we manually annotated a large-scale Chinese OIE dataset. In the comparative evaluation, we demonstrate that APRCOIE outperforms state-of-the-art Chinese OIE models and significantly expands the boundaries of achievable OIE performance. The code of APRCOIE and the annotated dataset are released on GitHub (https://github.com/jialin666/APRCOIE_v1)
format Preprint
id arxiv_https___arxiv_org_abs_2403_10758
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rules still work for Open Information Extraction
Hua, Jialin
Luo, Liangqing
Ping, Weiying
Liao, Yan
Tao, Chunhai
Lub, Xuewen
Computation and Language
Open information extraction (OIE) aims to extract surface relations and their corresponding arguments from natural language text, irrespective of domain. This paper presents an innovative OIE model, APRCOIE, tailored for Chinese text. Diverging from previous models, our model generates extraction patterns autonomously. The model defines a new pattern form for Chinese OIE and proposes an automated pattern generation methodology. In that way, the model can handle a wide array of complex and diverse Chinese grammatical phenomena. We design a preliminary filter based on tensor computing to conduct the extraction procedure efficiently. To train the model, we manually annotated a large-scale Chinese OIE dataset. In the comparative evaluation, we demonstrate that APRCOIE outperforms state-of-the-art Chinese OIE models and significantly expands the boundaries of achievable OIE performance. The code of APRCOIE and the annotated dataset are released on GitHub (https://github.com/jialin666/APRCOIE_v1)
title Rules still work for Open Information Extraction
topic Computation and Language
url https://arxiv.org/abs/2403.10758