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Grammar guided embedding based Chinese long text sentiment classification

机译:基于语法的嵌入式嵌入式中国长文本情绪分类

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摘要

Although the state-of-the-art sentiment classification approaches, such as LSTM and TextCNN, have achieved a good performance on Chinese short text sentiment analysis, the Chinese long text sentiment classification is still a challenge because of the sentiment change problem and the long text structure problem. Therefore, we propose a grammar guided embedding model (GGE) and a novel Chinese long text sentiment classification framework. First, the part-of-speech (POS) tags are introduced as the Chinese long text grammar guided information which can help classification approaches to model the Chinese long text structure and the important structure of sentiment change. Second, we proposed a simple GGE training method which considers the combination representation of word sequence and POS sequence. Finally, we proposed a unified framework which combines our novel GGE with TextCNN. Experiment results show that after using GGE, the model outperforms the state-of-the-art approaches. At the same time, we also found that the GGE achieves the model converge faster, that is, it can achieve better results than without GGE when there is only a small amount of training data. Thus, we believe that the GGE can help machines better understand human language sentiment expression structure.
机译:虽然最先进的情绪分类方法,如LSTM和Textcnn,已经取得了良好的中国短文本情感分析的良好表现,但中国的长篇文本情绪分类仍然是一个挑战,因为情绪变化问题和长期以来文本结构问题。因此,我们提出了一种语法指导嵌入模型(GGE)和新型中国长文本情绪分类框架。首先,介绍讲话(POS)标签作为中国的长篇文本语法引导信息,可以帮助分类方法来模拟中国长文本结构和情绪变化的重要结构。其次,我们提出了一种简单的GGE训练方法,其考虑了单词序列和POS序列的组合表示。最后,我们提出了一个统一的框架,将我们的小说GGE与Textcnn结合起来。实验结果表明,在使用GGE之后,模型优于最先进的方法。与此同时,我们还发现GGE实现了模型更快的速度,即,当只有少量训练数据时,它可以达到更好的结果。因此,我们认为GGE可以帮助机器更好地理解人类语言情感表达结构。

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