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Neural Co-training for Sentiment Classification with Product Attributes

机译:具有产品属性的神经共同培训

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Sentiment classification aims to detect polarity from a piece of text. The polarity is usually positive or negative, and the text genre is usually product review. The challenges of sentiment classification are that it is hard to capture semantic of reviews, and the labeled data is hard to annotate. Therefore, we propose neural co-training to learn the semantic representation of each review using the neural network model, and learn the information from unlabeled data using a co-training framework. In particular, we use the attention-based bi-directional Gated Recurrent Unit (Att-BiGRU) to model the semantic content of each review and regard different categories of the target product as different views. We then use a co-training framework to learn and predict the unlabeled reviews with different views. Experiment results with the Yelp dataset demonstrate the effectiveness of our approach.
机译:情绪分类旨在从一块文本中检测极性。极性通常是正的或阴性的,文本类型通常是产品审查。情绪分类的挑战是,难以捕获的评论,标记的数据很难注释。因此,我们提出了使用神经网络模型来学习每次审查的语义表示,并使用共同训练框架从未标记数据学习信息。特别是,我们使用基于关注的双向门控复发单元(ATT-Bigru)来模拟每次评论的语义内容,并将不同类别的目标产品视为不同的视图。然后,我们使用共同培训框架来学习和预测不同视图的未标记的评论。 yelp数据集的实验结果证明了我们方法的有效性。

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