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Dynamic Embedding Projection-Gated Convolutional Neural Networks for Text Classification

Zhipeng Tan, Jing Chen, Qi Kang, MengChu Zhou, Abdullah Abusorrah, Khaled Sedraoui

2021IEEE Transactions on Neural Networks and Learning Systems87 citationsDOI

Abstract

Text classification is a fundamental and important area of natural language processing for assigning a text into at least one predefined tag or category according to its content. Most of the advanced systems are either too simple to get high accuracy or centered on using complex structures to capture the genuinely required category information, which requires long time to converge during their training stage. In order to address such challenging issues, we propose a dynamic embedding projection-gated convolutional neural network (DEP-CNN) for multi-class and multi-label text classification. Its dynamic embedding projection gate (DEPG) transforms and carries word information by using gating units and shortcut connections to control how much context information is incorporated into each specific position of a word-embedding matrix in a text. To our knowledge, we are the first to apply DEPG over a word-embedding matrix. The experimental results on four known benchmark datasets display that DEP-CNN outperforms its recent peers.

Topics & Concepts

Computer scienceEmbeddingConvolutional neural networkProjection (relational algebra)Word embeddingBenchmark (surveying)Artificial intelligenceContext (archaeology)Word (group theory)Class (philosophy)Simple (philosophy)Pattern recognition (psychology)Natural language processingAlgorithmMathematicsPaleontologyGeographyGeodesyPhilosophyBiologyGeometryEpistemologyText and Document Classification TechnologiesTopic ModelingSentiment Analysis and Opinion Mining