HGAT: Heterogeneous Graph Attention Networks for Semi-supervised Short Text Classification

Tianchi Yang, Linmei Hu, C. Shi, Houye Ji, Xiaoli Li, Liqiang Nie
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引用次数: 65

Abstract

Short text classification has been widely explored in news tagging to provide more efficient search strategies and more effective search results for information retrieval. However, most existing studies, concentrating on long text classification, deliver unsatisfactory performance on short texts due to the sparsity issue and the insufficiency of labeled data. In this article, we propose a novel heterogeneous graph neural network-based method for semi-supervised short text classification, leveraging full advantage of limited labeled data and large unlabeled data through information propagation along the graph. Specifically, we first present a flexible heterogeneous information network (HIN) framework for modeling short texts, which can integrate any type of additional information and meanwhile capture their relations to address the semantic sparsity. Then, we propose Heterogeneous Graph Attention networks (HGAT) to embed the HIN for short text classification based on a dual-level attention mechanism, including node-level and type-level attentions. To efficiently classify new coming texts that do not previously exist in the HIN, we extend our model HGAT for inductive learning, avoiding re-training the model on the evolving HIN. Extensive experiments on single-/multi-label classification demonstrates that our proposed model HGAT significantly outperforms state-of-the-art methods across the benchmark datasets under both transductive and inductive learning.
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半监督短文本分类的异构图注意网络
短文本分类在新闻标注中得到了广泛的探索,为信息检索提供更高效的搜索策略和更有效的搜索结果。然而,大多数现有的研究都集中在长文本分类上,由于稀疏性问题和标记数据的不足,对短文本的分类效果并不理想。本文提出了一种基于异构图神经网络的半监督短文本分类方法,通过信息沿图传播,充分利用有限标记数据和大量未标记数据的优势。具体来说,我们首先提出了一个灵活的异构信息网络(HIN)框架,该框架可以集成任何类型的附加信息,同时捕获它们之间的关系以解决语义稀疏性问题。在此基础上,我们提出了基于节点级和类型级两种注意机制的异构图注意网络(HGAT)来嵌入HIN进行短文本分类。为了有效地对HIN中以前不存在的新文本进行分类,我们将模型HGAT扩展为归纳学习,避免了在不断发展的HIN上重新训练模型。在单/多标签分类上的大量实验表明,我们提出的HGAT模型在传导学习和归纳学习的基准数据集上都明显优于最先进的方法。
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