TW-TGNN: Two Windows Graph-Based Model for Text Classification

Xinyu Wu, Zheng Luo, Zhanwei Du, Jiaxin Wang, Chao Gao, Xianghua Li
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引用次数: 3

Abstract

Text classification is the most fundamental and classical task in the natural language processing (NLP). Recently, graph neural network (GNN) methods, especially the graph-based model, have been applied for solving this issue because of their superior capacity of capturing the global co-occurrence information. However, some existing GNN-based methods adopt a corpus-level graph structure which causes a high memory consumption. In addition, these methods have not taken account of the global co-occurrence information and local semantic information at the same time. To address these problems, we propose a new GNN-based model, namely two windows text gnn model (TW-TGNN), for text classification. More specifically, we build text-level graph for each text with a local sliding window and a dynamic global window. For one thing, the local window sliding inside the text will acquire enough local semantic features. For another, the dynamic global window sliding betweent texts can generate dynamic shared weight matrix, which overcomes the limitation of the fixed corpus level co-occurrence and provides richer dynamic global information. Our experimental results on four benchmark datasets illustrate the improvement of the proposed method over state-of-the-art text classification methods. Moreover, we find that our method captures adequate global information for the short text which is beneficial for overcoming the insufficient contextual information in the process of the short text classification.
TW-TGNN:两种基于Windows图的文本分类模型
文本分类是自然语言处理(NLP)中最基本、最经典的任务。近年来,图神经网络(graph neural network, GNN)方法,特别是基于图的模型,因其具有捕获全局共现信息的能力而被应用于解决这一问题。然而,现有的一些基于gnn的方法采用了语料库级图结构,导致内存消耗很大。此外,这些方法没有同时考虑全局共现信息和局部语义信息。为了解决这些问题,我们提出了一种新的基于gnn的文本分类模型,即双窗口文本gnn模型(TW-TGNN)。更具体地说,我们为每个文本构建具有本地滑动窗口和动态全局窗口的文本级图。一方面,在文本内部滑动的局部窗口将获得足够的局部语义特征。另一方面,文本间动态全局窗口滑动可以生成动态共享权矩阵,克服了固定语料库级共现的限制,提供了更丰富的动态全局信息。我们在四个基准数据集上的实验结果说明了所提出的方法比最先进的文本分类方法的改进。此外,我们发现我们的方法为短文本捕获了足够的全局信息,这有利于克服短文本分类过程中上下文信息不足的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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