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Papers/BertGCN: Transductive Text Classification by Combining GCN...

BertGCN: Transductive Text Classification by Combining GCN and BERT

Yuxiao Lin, Yuxian Meng, Xiaofei Sun, Qinghong Han, Kun Kuang, Jiwei Li, Fei Wu

2021-05-12Text Classificationtext-classificationClassification
PaperPDFCode(official)

Abstract

In this work, we propose BertGCN, a model that combines large scale pretraining and transductive learning for text classification. BertGCN constructs a heterogeneous graph over the dataset and represents documents as nodes using BERT representations. By jointly training the BERT and GCN modules within BertGCN, the proposed model is able to leverage the advantages of both worlds: large-scale pretraining which takes the advantage of the massive amount of raw data and transductive learning which jointly learns representations for both training data and unlabeled test data by propagating label influence through graph convolution. Experiments show that BertGCN achieves SOTA performances on a wide range of text classification datasets. Code is available at https://github.com/ZeroRin/BertGCN.

Results

TaskDatasetMetricValueModel
Text ClassificationR52Accuracy96.61-6 BertGCN
Text ClassificationOhsumedAccuracy72.8RoBERTaGCN
Text ClassificationR8Accuracy98.2RoBERTaGCN
Text Classification20 NewsgroupsAccuracy89.5RoBERTaGCN
Text ClassificationMRAccuracy89.7RoBERTaGCN
Text Classification20NEWSAccuracy89.5RoBERTaGCN
ClassificationR52Accuracy96.61-6 BertGCN
ClassificationOhsumedAccuracy72.8RoBERTaGCN
ClassificationR8Accuracy98.2RoBERTaGCN
Classification20 NewsgroupsAccuracy89.5RoBERTaGCN
ClassificationMRAccuracy89.7RoBERTaGCN
Classification20NEWSAccuracy89.5RoBERTaGCN

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