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Auteurs principaux: Liu, Huadai, Xu, Wenqiang, Lin, Xuan, Huo, Jingjing, Chen, Hong, Zhao, Zhou
Format: Preprint
Publié: 2022
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Accès en ligne:https://arxiv.org/abs/2208.09612
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author Liu, Huadai
Xu, Wenqiang
Lin, Xuan
Huo, Jingjing
Chen, Hong
Zhao, Zhou
author_facet Liu, Huadai
Xu, Wenqiang
Lin, Xuan
Huo, Jingjing
Chen, Hong
Zhao, Zhou
contents Argument mining aims to detect all possible argumentative components and identify their relationships automatically. As a thriving task in natural language processing, there has been a large amount of corpus for academic study and application development in this field. However, the research in this area is still constrained by the inherent limitations of existing datasets. Specifically, all the publicly available datasets are relatively small in scale, and few of them provide information from other modalities to facilitate the learning process. Moreover, the statements and expressions in these corpora are usually in a compact form, which restricts the generalization ability of models. To this end, we collect a novel dataset AntCritic to serve as a helpful complement to this area, which consists of about 10k free-form and visually-rich financial comments and supports both argument component detection and argument relation prediction tasks. Besides, to cope with the challenges brought by scenario expansion, we thoroughly explore the fine-grained relation prediction and structure reconstruction scheme and discuss the encoding mechanism for visual styles and layouts. On this basis, we design two simple but effective model architectures and conduct various experiments on this dataset to provide benchmark performances as a reference and verify the practicability of our proposed architecture. We release our data and code in this link, and this dataset follows CC BY-NC-ND 4.0 license.
format Preprint
id arxiv_https___arxiv_org_abs_2208_09612
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle AntCritic: Argument Mining for Free-Form and Visually-Rich Financial Comments
Liu, Huadai
Xu, Wenqiang
Lin, Xuan
Huo, Jingjing
Chen, Hong
Zhao, Zhou
Information Retrieval
Argument mining aims to detect all possible argumentative components and identify their relationships automatically. As a thriving task in natural language processing, there has been a large amount of corpus for academic study and application development in this field. However, the research in this area is still constrained by the inherent limitations of existing datasets. Specifically, all the publicly available datasets are relatively small in scale, and few of them provide information from other modalities to facilitate the learning process. Moreover, the statements and expressions in these corpora are usually in a compact form, which restricts the generalization ability of models. To this end, we collect a novel dataset AntCritic to serve as a helpful complement to this area, which consists of about 10k free-form and visually-rich financial comments and supports both argument component detection and argument relation prediction tasks. Besides, to cope with the challenges brought by scenario expansion, we thoroughly explore the fine-grained relation prediction and structure reconstruction scheme and discuss the encoding mechanism for visual styles and layouts. On this basis, we design two simple but effective model architectures and conduct various experiments on this dataset to provide benchmark performances as a reference and verify the practicability of our proposed architecture. We release our data and code in this link, and this dataset follows CC BY-NC-ND 4.0 license.
title AntCritic: Argument Mining for Free-Form and Visually-Rich Financial Comments
topic Information Retrieval
url https://arxiv.org/abs/2208.09612