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Papers/SimReg: Achieving Higher Performance in the Pretraining via Embedding Similarity Regularization
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SimReg: Achieving Higher Performance in the Pretraining via Embedding Similarity Regularization

May 9, 2026

arXiv
Abstract

Pretraining large language models (LLMs) with next-token prediction has led to remarkable advances, yet the context-dependent nature of token embeddings in such models results in high intra-class variance and inter-class similarity, thus hindering the efficiency of representation learning. While similarity-based regularization has demonstrated benefit in supervised fine-tuning and classification tasks, its application and efficacy in large-scale LLM pretraining remains underexplored. In this work, we propose the SimReg, an embedding similarity regularization loss that explicitly encourages token representations with the same ground-truth label within each sequence to be more similar, while enforcing separation from different-label tokens via a contrastive loss. Our analysis reveals that this mechanism introduces gains by enlarging multi-classification margins, thereby enabling more efficient classification. Extensive experiments across dense and Mixture-of-Experts (MoE) architectures demonstrate that SimReg consistently accelerates training convergence by over 30% and improves average zero-shot downstream performance by over 1% across standard benchmarks. Further ablation studies and analyses offer practical insights into hyperparameter tuning and loss effectiveness.

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Authors
Yan Sun, Guoxia Wang, Jinle Zeng, JiaBin Yang, Shuai Li, Li Shen, Dacheng Tao, DianHai Yu, Haifeng Wang
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arXiv:2605.08809