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Multi-view text classification through integrated RNN autoencoder learning of word, sentence, emotion and paragraph representations
by
Singh, Narinderjit Singh Sawaran
, Ding, Yitao
, Alfilh, Raed H. C.
, Shalaby, Mohamed
in
639/166
/ 639/705
/ Architecture
/ Autoencoder
/ Classification
/ Deep learning
/ Deep neural networks
/ Development aid
/ Efficiency
/ Emotions
/ End-to-end learning
/ Feature integration
/ Humanities and Social Sciences
/ Humans
/ Integration
/ Latency
/ Learning
/ Machine Learning
/ Mental task performance
/ Multi-view learning
/ multidisciplinary
/ Natural language
/ Natural Language Processing
/ Neural networks
/ Neural Networks, Computer
/ Optimization
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
2025
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Multi-view text classification through integrated RNN autoencoder learning of word, sentence, emotion and paragraph representations
by
Singh, Narinderjit Singh Sawaran
, Ding, Yitao
, Alfilh, Raed H. C.
, Shalaby, Mohamed
in
639/166
/ 639/705
/ Architecture
/ Autoencoder
/ Classification
/ Deep learning
/ Deep neural networks
/ Development aid
/ Efficiency
/ Emotions
/ End-to-end learning
/ Feature integration
/ Humanities and Social Sciences
/ Humans
/ Integration
/ Latency
/ Learning
/ Machine Learning
/ Mental task performance
/ Multi-view learning
/ multidisciplinary
/ Natural language
/ Natural Language Processing
/ Neural networks
/ Neural Networks, Computer
/ Optimization
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
2025
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Multi-view text classification through integrated RNN autoencoder learning of word, sentence, emotion and paragraph representations
by
Singh, Narinderjit Singh Sawaran
, Ding, Yitao
, Alfilh, Raed H. C.
, Shalaby, Mohamed
in
639/166
/ 639/705
/ Architecture
/ Autoencoder
/ Classification
/ Deep learning
/ Deep neural networks
/ Development aid
/ Efficiency
/ Emotions
/ End-to-end learning
/ Feature integration
/ Humanities and Social Sciences
/ Humans
/ Integration
/ Latency
/ Learning
/ Machine Learning
/ Mental task performance
/ Multi-view learning
/ multidisciplinary
/ Natural language
/ Natural Language Processing
/ Neural networks
/ Neural Networks, Computer
/ Optimization
/ Science
/ Science (multidisciplinary)
/ Semantics
/ Sentiment analysis
/ Text categorization
/ Text classification
2025
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Multi-view text classification through integrated RNN autoencoder learning of word, sentence, emotion and paragraph representations
Journal Article
Multi-view text classification through integrated RNN autoencoder learning of word, sentence, emotion and paragraph representations
2025
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Overview
Text classification performance can be constrained by single-view approaches that process documents through a single representational lens and struggle to capture the multi-dimensional nature of textual information. We propose FMV-RNN-AE (Feature integration Multi-View RNN Autoencoder), an end-to-end framework that systematically integrates four complementary textual views—word-level embeddings, sentence-level representations, emotion-based features, and paragraph-level semantics. FMV-RNN-AE employs standard RNN autoencoders to learn compressed view-specific representations, followed by a learnable fusion module and joint optimization for classification, focusing on the principled integration of these components rather than introducing a fundamentally new architecture. Comprehensive evaluation across seven benchmark datasets shows consistent improvements of 4.7% compared to strong single-view approaches and 2.2–4.0% over existing multi-view methods, with particularly strong performance on sentiment-oriented tasks (93.5% accuracy on Hate Speech, 92.7% on IMDb). Compared with BERT, FMV-RNN-AE achieves comparable average accuracy while using 7.2
fewer parameters and 50% less memory, at the cost of approximately 4
higher inference latency due to sequential multi-view processing. Thus, the framework is best interpreted as a memory-efficient, task-sensitive alternative suited to latency-tolerant, batch or offline scenarios rather than real-time applications. These results highlight the potential of carefully designed multi-view autoencoder integration for improving text classification robustness across diverse domains under constrained memory budgets.
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