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An Unsupervised Cross-Lingual Topic Model Framework for Sentiment Classification

机译:情感分类的无监督跨语言主题模型框架

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摘要

Sentiment classification aims to determine the sentiment polarity expressed in a text. In online customer reviews, the sentiment polarities of words are usually dependent on the corresponding aspects. For instance, in mobile phone reviews, we may expect the battery time but not enjoy the response time of the operating system. Therefore, it is necessary and appealing to consider aspects when conducting sentiment classification. Probabilistic topic models that jointly detect aspects and sentiments have gained much success recently. However, most of the existing models are designed to work well in a language with rich resources. Directly applying those models on poor-quality corpora often leads to poor results. Consequently, a potential solution is to use the cross-lingual topic model to improve the sentiment classification for a target language by leveraging data and knowledge from a source language. However, the existing cross-lingual topic models are not suitable for sentiment classification because sentiment factors are not considered therein. To solve these problems, we propose for the first time a novel cross-lingual topic model framework which can be easily combined with the state-of-the-art aspect/sentiment models. Extensive experiments in different domains and multiple languages demonstrate that our model can significantly improve the accuracy of sentiment classification in the target language.
机译:情感分类旨在确定文本中表达的情感极性。在在线客户评论中,词语的情感极性通常取决于相应的方面。例如,在手机评论中,我们可能期望电池时间,但不能享受操作系统的响应时间。因此,在进行情感分类时必须考虑方面。联合检测方面和情感的概率主题模型最近获得了很大的成功。但是,大多数现有模型都设计为可以在具有丰富资源的语言中很好地工作。将这些模型直接应用于质量低下的语料库通常会导致不良结果。因此,一种潜在的解决方案是使用跨语言主题模型,通过利用源语言的数据和知识来改善目标语言的情感分类。但是,现有的跨语言主题模型不适合情感分类,因为其中未考虑情感因素。为了解决这些问题,我们首次提出了一种新颖的跨语言主题模型框架,可以轻松地与最新的方面/情感模型结合使用。在不同领域和多种语言中进行的大量实验表明,我们的模型可以显着提高目标语言中情感分类的准确性。

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