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A Variational Approach to Weakly Supervised Document-Level Multi-Aspect Sentiment Classification

机译:弱监督的文档级多方面情感分类的变分方法

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In this paper, we propose a variational approach to weakly supervised document-level multi-aspect sentiment classification. Instead of using user-generated ratings or annotations provided by domain experts, we use target-opinion word pairs as "supervision." These word pairs can be extracted by using dependency parsers and simple rules. Our objective is to predict an opinion word given a target word while our ultimate goal is to learn a sentiment polarity classifier to predict the sentiment polarity of each aspect given a document. By introducing a latent variable, i.e., the sentiment polarity, to the objective function, we can inject the sentiment polarity classifier to the objective via the variational lower bound. We can learn a sentiment polarity classifier by optimizing the lower bound. We show that our method can outperform weakly supervised baselines on TripAdvisor and BeerAd-voeate datasets and can be comparable to the state-of-the-art supervised method with hundreds of labels per aspect.
机译:在本文中,我们提出了一种变体方法,用于弱监督的文档级多方面情感分类。我们不使用域专家提供的用户生成的评分或注释,而是使用目标意见词对作为“监督”。这些单词对可以通过使用依赖解析器和简单规则来提取。我们的目标是在给定目标词的情况下预测意见词,而我们的最终目标是学习情绪极性分类器,从而在给定文档的情况下预测各个方面的情绪极性。通过将潜变量(即情感极性)引入目标函数,我们可以通过变分下界将情感极性分类器注入到目标中。我们可以通过优化下界来学习情绪极性分类器。我们证明了我们的方法可以胜过TripAdvisor和BeerAd-voeate数据集上的弱监督基线,并且可以与具有每个方面数百个标签的最新监督方法相媲美。

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