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Domain attention model for multi-domain sentiment classification

机译:用于多领域情感分类的领域注意力模型

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摘要

Sentiment classification is widely known as a domain-dependent problem. In order to learn an accurate domain-specific sentiment classifier, a large number of labeled samples are needed, which are expensive and time-consuming to annotate. Multi-domain sentiment analysis based on multi-task learning can leverage labeled samples in each single domain, which can alleviate the need for large amount of labeled data in all domains. In this paper, we propose a domain attention model for multi-domain sentiment analysis. In our approach, the domain representation is used as attention to select the most domain-related features in each domain. The domain representation is obtained through an auxiliary domain classification task, which works as domain regularizer. In this way, both shared and domain-specific features for sentiment classification are extracted simultaneously. In contrast with existing multi-domain sentiment classification methods, our approach can extract the most discriminative features from a shared hidden layer in a more compact way. Experimental results on two multi-domain sentiment datasets validate the effectiveness of our approach.
机译:情感分类是众所周知的领域相关问题。为了学习准确的特定于领域的情感分类器,需要大量的标记样本,这是昂贵且需要注释的时间。基于多任务学习的多域情感分析可以利用每个单个域中的标记样本,从而可以减轻所有域中大量标记数据的需求。在本文中,我们提出了一种用于多领域情感分析的领域关注模型。在我们的方法中,使用域表示法来注意选择每个域中与域相关性最强的功能。域表示是通过辅助域分类任务获得的,该任务用作域正则化器。以这种方式,用于情感分类的共享和特定于领域的特征被同时提取。与现有的多域情感分类方法相比,我们的方法可以以更紧凑的方式从共享的隐藏层中提取最具区分性的特征。在两个多域情感数据集上的实验结果验证了我们方法的有效性。

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