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Learning patterns for discovering domain-oriented opinion words

机译:学习模式,用于发现面向域的意见单词

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摘要

Sentiment analysis is a challenging task that attracted increasing interest during the last years. The availability of online data along with the business interest to keep up with consumer feedback generates a constant demand for online analysis of user-generated content. A key role to this task plays the utilization of domain-specific lexicons of opinion words that enables algorithms to classify short snippets of text into sentiment classes (positive, negative). This process is known as dictionary-based sentiment analysis. The related work tends to solve this lexicon identification problem by either exploiting a corpus and a thesaurus or by manually defining a set of patterns that will extract opinion words. In this work, we propose an unsupervised approach for discovering patterns that will extract domain-specific dictionary. Our approach (DidaxTo) utilizes opinion modifiers, sentiment consistency theories, polarity assignment graphs and pattern similarity metrics. The outcome is compared against lexicons extracted by the state-of-the-art approaches on a sentiment analysis task. Experiments on user reviews coming from a diverse set of products demonstrate the utility of the proposed method. An implementation of the proposed approach in an easy to use application for extracting opinion words from any domain and evaluate their quality is also presented.
机译:情绪分析是一个具有挑战性的任务,在过去几年中引起了越来越令人兴趣的任务。在线数据的可用性以及业务兴趣跟上消费者反馈的兴趣生成对用户生成内容的在线分析的持续需求。此任务的一个关键角色扮演了用于观察词的特定于域的词典的逻辑,这使得算法将短片段分类为情绪类(正,负)。该过程称为基于字典的情绪分析。相关工作倾向于通过利用语料库和词库或手动定义将提取意见词的一组模式来解决这个词典识别问题。在这项工作中,我们提出了一种无监督的方法来发现将提取特定于域名词典的模式。我们的方法(Didaxto)利用意见修饰符,情绪一致性理论,极性分配图和模式相似度指标。将结果与由最先进的方法对情感分析任务提取的词汇进行比较。来自多种产品的用户评论的实验证明了所提出的方法的效用。还介绍了在易于使用的应用程序中提取从任何域中提取意见单词并评估其质量的应用程序的实施。

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