CLJul 22, 2023

Explainable Topic-Enhanced Argument Mining from Heterogeneous Sources

arXiv:2307.12131v1h-index: 46
Originality Incremental advance
AI Analysis

This work improves argument mining for controversial topics, offering incremental enhancements in target and topic representation.

The paper tackled the problem of argument mining from heterogeneous sources by addressing insufficient target representation and ignored sentence-level topic information, resulting in a model that outperformed state-of-the-art baselines on benchmark datasets.

Given a controversial target such as ``nuclear energy'', argument mining aims to identify the argumentative text from heterogeneous sources. Current approaches focus on exploring better ways of integrating the target-associated semantic information with the argumentative text. Despite their empirical successes, two issues remain unsolved: (i) a target is represented by a word or a phrase, which is insufficient to cover a diverse set of target-related subtopics; (ii) the sentence-level topic information within an argument, which we believe is crucial for argument mining, is ignored. To tackle the above issues, we propose a novel explainable topic-enhanced argument mining approach. Specifically, with the use of the neural topic model and the language model, the target information is augmented by explainable topic representations. Moreover, the sentence-level topic information within the argument is captured by minimizing the distance between its latent topic distribution and its semantic representation through mutual learning. Experiments have been conducted on the benchmark dataset in both the in-target setting and the cross-target setting. Results demonstrate the superiority of the proposed model against the state-of-the-art baselines.

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