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Tensor Graph Convolutional Networks for Text Classification

About

Compared to sequential learning models, graph-based neural networks exhibit some excellent properties, such as ability capturing global information. In this paper, we investigate graph-based neural networks for text classification problem. A new framework TensorGCN (tensor graph convolutional networks), is presented for this task. A text graph tensor is firstly constructed to describe semantic, syntactic, and sequential contextual information. Then, two kinds of propagation learning perform on the text graph tensor. The first is intra-graph propagation used for aggregating information from neighborhood nodes in a single graph. The second is inter-graph propagation used for harmonizing heterogeneous information between graphs. Extensive experiments are conducted on benchmark datasets, and the results illustrate the effectiveness of our proposed framework. Our proposed TensorGCN presents an effective way to harmonize and integrate heterogeneous information from different kinds of graphs.

Xien Liu, Xinxin You, Xiao Zhang, Ji Wu, Ping Lv• 2020

Related benchmarks

TaskDatasetResultRank
Text ClassificationMR (test)
Accuracy77.91
148
Text Classification20News
Accuracy87.74
127
Text ClassificationMR
Accuracy77.91
106
Text ClassificationR8
Accuracy98.04
71
Text ClassificationR52
Accuracy95.05
56
Text ClassificationR8 (test)
Accuracy98.04
56
Document ClassificationOhsumed (test)
Accuracy70.11
54
Text Classificationmovie review dataset (test)
Accuracy52.03
35
Text ClassificationR52 (test)
Accuracy95.05
30
Text Classificationohsumed
Accuracy70.11
25
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