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CoGraphNet for enhanced text classification using word-sentence heterogeneous graph representations and improved interpretability
by
Fu, Xueying
, Hu, Junyi
, Li, Pengyi
, Chen, Juntao
in
639/705/1046
/ 639/705/117
/ 639/705/258
/ Accuracy
/ Artificial intelligence
/ Classification
/ CoGraphNet
/ Datasets
/ Graph quality
/ Graph representation learning
/ Graph representations
/ Humanities and Social Sciences
/ Information processing
/ Information retrieval
/ Interpretability
/ Knowledge representation
/ multidisciplinary
/ Natural language processing
/ Neural networks
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
/ Word-sentence heterogeneous graphs
2025
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CoGraphNet for enhanced text classification using word-sentence heterogeneous graph representations and improved interpretability
by
Fu, Xueying
, Hu, Junyi
, Li, Pengyi
, Chen, Juntao
in
639/705/1046
/ 639/705/117
/ 639/705/258
/ Accuracy
/ Artificial intelligence
/ Classification
/ CoGraphNet
/ Datasets
/ Graph quality
/ Graph representation learning
/ Graph representations
/ Humanities and Social Sciences
/ Information processing
/ Information retrieval
/ Interpretability
/ Knowledge representation
/ multidisciplinary
/ Natural language processing
/ Neural networks
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
/ Word-sentence heterogeneous graphs
2025
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Do you wish to request the book?
CoGraphNet for enhanced text classification using word-sentence heterogeneous graph representations and improved interpretability
by
Fu, Xueying
, Hu, Junyi
, Li, Pengyi
, Chen, Juntao
in
639/705/1046
/ 639/705/117
/ 639/705/258
/ Accuracy
/ Artificial intelligence
/ Classification
/ CoGraphNet
/ Datasets
/ Graph quality
/ Graph representation learning
/ Graph representations
/ Humanities and Social Sciences
/ Information processing
/ Information retrieval
/ Interpretability
/ Knowledge representation
/ multidisciplinary
/ Natural language processing
/ Neural networks
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
/ Word-sentence heterogeneous graphs
2025
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CoGraphNet for enhanced text classification using word-sentence heterogeneous graph representations and improved interpretability
Journal Article
CoGraphNet for enhanced text classification using word-sentence heterogeneous graph representations and improved interpretability
2025
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Overview
Text Graph Representation Learning through Graph Neural Networks (TG-GNN) is a powerful approach in natural language processing and information retrieval. However, it faces challenges in computational complexity and interpretability. In this work, we propose CoGraphNet, a novel graph-based model for text classification, addressing key issues. To overcome information loss, we construct separate heterogeneous graphs for words and sentences, capturing multi-tiered contextual information. We enhance interpretability by incorporating positional bias weights, improving model clarity. CoGraphNet provides precise analysis, highlighting important words or sentences. We achieve enhanced contextual comprehension and accuracy through novel graph structures and the SwiGLU activation function. Experiments on Ohsumed, MR, R52, and 20NG datasets confirm CoGraphNet’s effectiveness in complex classification tasks, demonstrating its superiority.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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