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Main Authors: Srinivasagan, Gokul, Hartung, Kai, Georges, Munir
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.28526
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author Srinivasagan, Gokul
Hartung, Kai
Georges, Munir
author_facet Srinivasagan, Gokul
Hartung, Kai
Georges, Munir
contents Masked language modeling has become a standard pretraining objective for training encoder-based language models. In this approach, certain tokens in the input are masked, and the model learns to predict them using the surrounding context. This process enables the model to capture both syntactic and semantic properties of language. Conventionally, the tokens selected for masking are chosen at random, which may not always yield the most effective learning signals. In this work, we examine a token masking strategy based on entropy distribution. We use the model's entropy over token predictions to identify which tokens should be masked. This method aims to target tokens that are more informative and uncertain to improve the training efficacy. We also propose a novel self-masking approach that enhances training efficiency without relying on an external reference model. Experimental results demonstrate that our method achieves an average performance improvement of 5% in GLUE scores compared to the baseline. Further, we experiment with combining knowledge distillation with entropy masking, resulting in the best overall results.
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publishDate 2026
record_format arxiv
spellingShingle Entropy-aware Masking for Masked Language Modeling
Srinivasagan, Gokul
Hartung, Kai
Georges, Munir
Artificial Intelligence
Computation and Language
Masked language modeling has become a standard pretraining objective for training encoder-based language models. In this approach, certain tokens in the input are masked, and the model learns to predict them using the surrounding context. This process enables the model to capture both syntactic and semantic properties of language. Conventionally, the tokens selected for masking are chosen at random, which may not always yield the most effective learning signals. In this work, we examine a token masking strategy based on entropy distribution. We use the model's entropy over token predictions to identify which tokens should be masked. This method aims to target tokens that are more informative and uncertain to improve the training efficacy. We also propose a novel self-masking approach that enhances training efficiency without relying on an external reference model. Experimental results demonstrate that our method achieves an average performance improvement of 5% in GLUE scores compared to the baseline. Further, we experiment with combining knowledge distillation with entropy masking, resulting in the best overall results.
title Entropy-aware Masking for Masked Language Modeling
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2605.28526