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Be More with Less: Hypergraph Attention Networks for Inductive Text Classification

Kaize Ding, Jianling Wang, Jundong Li, Dingcheng Li, Huan Liu

2020215 citationsDOIOpen Access PDF

Abstract

Text classification is a critical research topic with broad applications in natural language processing. Recently, graph neural networks (GNNs) have received increasing attention in the research community and demonstrated their promising results on this canonical task. Despite the success, their performance could be largely jeopardized in practice since they are: (1) unable to capture high-order interaction between words; (2) inefficient to handle large datasets and new documents. To address those issues, in this paper, we propose a principled model -hypergraph attention networks (HyperGAT), which can obtain more expressive power with less computational consumption for text representation learning. Extensive experiments on various benchmark datasets demonstrate the efficacy of the proposed approach on the text classification task.

Topics & Concepts

HypergraphComputer scienceTask (project management)Benchmark (surveying)Artificial intelligenceGraphMachine learningExpressive powerRepresentation (politics)Artificial neural networkTask analysisNatural language processingTheoretical computer sciencePolitical scienceEconomicsMathematicsManagementLawGeodesyDiscrete mathematicsGeographyPoliticsTopic ModelingAdvanced Graph Neural NetworksSentiment Analysis and Opinion Mining
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