A Bootstrap Method for Automatic Rule Acquisition on Emotion Cause Extraction

Shuntaro Yada, K. Ikeda, K. Hoashi, K. Kageura
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引用次数: 29

Abstract

Emotion cause extraction is one of the promising research topics in sentiment analysis, but has not been well-investigated so far. This task enables us to obtain useful information for sentiment classification and possibly to gain further insights about human emotion as well. This paper proposes a bootstrapping technique to automatically acquire conjunctive phrases as textual cue patterns for emotion cause extraction. The proposed method first gathers emotion causes via manually given cue phrases. It then acquires new conjunctive phrases from emotion phrases that contain similar emotion causes to previously gathered ones. In existing studies, the cost for creating comprehensive cue phrase rules for building emotion cause corpora was high because of their dependencies both on languages and on textual natures. The contribution of our method is its ability to automatically create the corpora from just a few cue phrases as seeds. Our method can expand cue phrases at low cost and acquire a large number of emotion causes of the promising quality compared to human annotations.
一种基于自举法的情感原因自动提取规则获取方法
情感原因提取是情感分析中一个很有前途的研究课题,但迄今为止还没有得到很好的研究。这项任务使我们能够获得对情感分类有用的信息,并可能获得关于人类情感的进一步见解。本文提出了一种自动获取连接短语作为情感原因提取文本线索模式的自举技术。该方法首先通过人工给出的提示短语收集情绪原因。然后,它从情感短语中获取新的连词短语,这些短语包含与之前收集的情感短语相似的情感原因。在现有的研究中,由于情感语料库既依赖于语言,又依赖于文本的性质,因此构建全面的线索短语规则的成本很高。我们的方法的贡献在于它能够从几个提示短语作为种子自动创建语料库。与人工标注相比,我们的方法能够以低成本扩展提示短语,并获得大量的情感原因,质量有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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