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Extended Dependency-Based Word Embeddings for Aspect Extraction

机译:基于扩展的基于依赖性的Word Embeddings,用于方面提取

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Extracting aspects from opinion reviews is an essential task of fine-grained sentiment analysis. In this paper, we introduce outer product of dependency-based word vectors and specialized features as representation of words. With such extended embeddings composed in recurrent neural networks, we make use of advantages of both word embeddings and traditional features. Evaluated on SemEval 2014 task 4 dataset, the proposed method outperform existing recurrent models based methods, achieving a result comparable with the state-of-the-art method. It shows that it is an effective way to achieve better extraction performance by improving word representations.
机译:从“意见”评论中提取方面是细粒度情绪分析的重要任务。在本文中,我们引入了基于依赖性的词矢量的外部产物和专用特征作为单词的表示。通过在经常性神经网络中组成的这种扩展嵌入,我们使用Word Embeddings和传统功能的优势。在Semeval 2014任务4 DataSet上进行评估,所提出的方法优于基于现有的经常性模型的方法,实现了与最先进的方法相当的结果。它表明它是通过改进单词表示来实现更好的提取性能的有效方法。

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