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Efficient Document Embeddings via Self-Contrastive Bregman Divergence Learning

MCML Authors

Abstract

Learning quality document embeddings is a fundamental problem in natural language processing (NLP), information retrieval (IR), recommendation systems, and search engines. Despite recent advances in the development of transformer-based models that produce sentence embeddings with self-contrastive learning, the encoding of long documents (Ks of words) is still challenging with respect to both efficiency and quality considerations. Therefore, we train Longfomer-based document encoders using a state-of-the-art unsupervised contrastive learning method (SimCSE). Further on, we complement the baseline method -siamese neural network- with additional convex neural networks based on functional Bregman divergence aiming to enhance the quality of the output document representations. We show that overall the combination of a self-contrastive siamese network and our proposed neural Bregman network outperforms the baselines in two linear classification settings on three long document topic classification tasks from the legal and biomedical domains.

inproceedings


Findings @ACL 2023

Findings of the 61th Annual Meeting of the Association for Computational Linguistics. Toronto, Canada, Jul 09-14, 2023.
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A* Conference

Authors

D. Saggau • M. RezaeiB. Bischl • I. Chalkidis

Links

DOI

Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: SRB+23

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