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arxiv:2507.00994

Should We Still Pretrain Encoders with Masked Language Modeling?

Published on Jul 1
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Abstract

Learning high-quality text representations is fundamental to a wide range of NLP tasks. While encoder pretraining has traditionally relied on Masked Language Modeling (MLM), recent evidence suggests that decoder models pretrained with Causal Language Modeling (CLM) can be effectively repurposed as encoders, often surpassing traditional encoders on text representation benchmarks. However, it remains unclear whether these gains reflect an inherent advantage of the CLM objective or arise from confounding factors such as model and data scale. In this paper, we address this question through a series of large-scale, carefully controlled pretraining ablations, training a total of 30 models ranging from 210 million to 1 billion parameters, and conducting over 15,000 fine-tuning and evaluation runs. We find that while training with MLM generally yields better performance across text representation tasks, CLM-trained models are more data-efficient and demonstrate improved fine-tuning stability. Building on these findings, we experimentally show that a biphasic training strategy that sequentially applies CLM and then MLM, achieves optimal performance under a fixed computational training budget. Moreover, we demonstrate that this strategy becomes more appealing when initializing from readily available pretrained CLM models (from the existing LLM ecosystem), reducing the computational burden needed to train best-in-class encoder models. We release all project artifacts at https://hf.co/MLMvsCLM to foster further research.

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Let's have a look at token classification:

There's a problem with the assumption that CLM is better than MLM:

All MLM models are using EuroBERT. And EuroBERT is super bad, really bad for token classification, see EuroBERT paper (Table 1: https://arxiv.org/pdf/2503.05500).

So the assumption is maybe correct using EuroBERT, but definitely not for e.g. XLM-R.

I made comparisons with GPT-2 and BERT on CoNLL-2003 years ago. CLM is clearly behind, see here.

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Are there scenarios in text representation, such as embedding vector recall, where encoder models, which are bidirectionally encoded, are likely to outperform decoders of the same scale?

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