Multistream BertGCN for Sentiment Classification Based on Cross-Document Learning

Meng Li, Yujin Xie, Weifeng Yang, Shenyu Chen
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Abstract

Very recently, the BERT graph convolutional network (BertGCN) model has attracted much attention from researchers due to its good text classification performance. However, just using original documents in the corpus to construct the topology of graphs for GCN-based models may lose some effective information. In this paper, we focus on sentiment classification, an important branch of text classification, and propose the multistream BERT graph convolutional network (MS-BertGCN) for sentiment classification based on cross-document learning. In the proposed method, we first combine the documents in the training set based on within-class similarity. Then, each heterogeneous graph is constructed using a group of combinations of documents for the single-stream BertGCN model. Finally, we construct multistream-BertGCN (MS-BertGCN) based on multiple heterogeneous graphs constructed from different groups of combined documents. The experimental results show that our MS-BertGCN model outperforms state-of-the-art methods on sentiment classification tasks.
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基于跨文档学习的多流BertGCN情感分类
近年来,BERT图卷积网络(BertGCN)模型因其良好的文本分类性能而受到研究人员的广泛关注。然而,仅仅使用语料库中的原始文档来构建基于gcn的模型的图拓扑可能会丢失一些有效信息。本文针对文本分类的一个重要分支——情感分类,提出了基于跨文档学习的多流BERT图卷积网络(MS-BertGCN)进行情感分类。在该方法中,我们首先基于类内相似度对训练集中的文档进行组合。然后,使用单流BertGCN模型的一组文档组合构造每个异构图。最后,我们基于不同组合文档组构建的多个异构图构建了multistream-BertGCN (MS-BertGCN)。实验结果表明,我们的MS-BertGCN模型在情感分类任务上优于最先进的方法。
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