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Learning Disentangled Document Representations Based on a Classical Shallow Neural Encoder

  • 2026
  • OriginalPaper
  • Chapter
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Abstract

This chapter explores the application of disentanglement techniques to classical shallow neural encoders for learning document embeddings. The study introduces a method that incorporates a guidance task and a KL divergence regularization term to promote dimensional independence and semantic meaningfulness. The evaluation on synthetic and real-world datasets demonstrates the effectiveness of the proposed method in capturing real-world relationships, achieving independence across dimensions, and improving the interpretability of document embeddings. The findings highlight the potential of disentangled representations in enhancing the performance of machine learning models and their applicability in various downstream tasks.

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Title
Learning Disentangled Document Representations Based on a Classical Shallow Neural Encoder
Authors
Yuro Kanada
Sumio Fujita
Yoshiyuki Shoji
Copyright Year
2026
DOI
https://doi.org/10.1007/978-3-032-11976-6_5
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