Hierarchical Gated Convolutional Networks with Multi-Head Attention for Text Classification

Haizhou Du, Jingu Qian
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引用次数: 10

Abstract

Text classification is a fundamental problem in natural language processing. Recently, neural network models have been demonstrated to be capable of achieving remarkable performance in this domain. However, none of existing method can achieve excellent classification accuracy while concerning of computational cost. To solve this problem, we proposed hierarchical gated convolutional networks with multi-head attention which reduces computational cost through its two distinctive characteristics to save considerable model parameters. First, it has a hierarchical structure the same as the hierarchical structure of documents that has word-level and sentence-level, which not only benefits to classification performance but also reduces computational cost significantly by reusing parameters of the model in each sentence. Second, we apply gated convolutional network on both levels that enables our model achieved comparable performance to very deep networks with relatively shallow network depth. To further improve the performance of our model, multi-head attention mechanism is employed to differentiate more or less importance of words or sentences for better construction of document representation. Experiments conducted on the commonly used Yelp reviews datasets demonstrate that the proposed architecture obtains competitive performance against the state-of-the-art methods.
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基于多头关注的分层门控卷积网络文本分类
文本分类是自然语言处理中的一个基本问题。近年来,神经网络模型已被证明能够在这一领域取得显著的成绩。然而,现有的分类方法都不能在考虑计算成本的情况下达到很好的分类精度。为了解决这一问题,我们提出了具有多头关注的分层门控卷积网络,该网络通过其两个显著的特征降低了计算成本,节省了大量的模型参数。首先,它具有与具有词级和句子级的文档相同的层次结构,这不仅有利于分类性能,而且通过在每个句子中重用模型的参数,大大降低了计算成本。其次,我们在两个层次上应用门控卷积网络,使我们的模型能够达到与网络深度相对较浅的非常深的网络相当的性能。为了进一步提高模型的性能,我们采用多头注意机制来区分单词或句子的重要程度,以便更好地构建文档表示。在常用的Yelp评论数据集上进行的实验表明,所提出的架构与最先进的方法相比具有竞争力。
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