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Neural Network-Based Vector Representation of Documents for Reader-Emotion Categorization

机译:基于神经网络的读者情感分类的文献矢量表示

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In this paper, we propose a novel approach for reader-emotion categorization using word embedding learned from neural networks and an SVM classifier. The primary objective of such word embedding methods involves learning continuous distributed vector representations of words through neural networks. It can capture semantic context and syntactic cues, and subsequently be used to infer similarity measures among words, sentences, and even documents. Various methods of combining the word embeddings are tested for their performances on reader-emotion categorization of a Chinese news corpus. Results demonstrate that the proposed method, when compared to several other approaches, can achieve comparable or even better performances.
机译:在本文中,我们使用从神经网络和SVM分类器中学到的单词嵌入来提出一种新的读者情感分类方法。这些词嵌入方法的主要目标涉及通过神经网络学习连续分布式的单词的传染媒介表示。它可以捕获语义上下文和句法提示,随后用于推断单词,句子和甚至文档之间的相似性措施。在中国新闻语料库的读者情感分类上测试了各种组合嵌入式嵌入式的方法。结果表明,与其他几种方法相比,该方法可以达到可比或更好的性能。

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