CLAICVOct 13, 2025

Scaling Language-Centric Omnimodal Representation Learning

arXiv:2510.11693v18 citationsh-index: 8Has Code
Originality Incremental advance
AI Analysis

This addresses the need for efficient and effective multimodal representation learning for AI applications, though it is incremental by building on existing MLLM and contrastive learning methods.

This work tackles the problem of understanding why multimodal large language models (MLLMs) fine-tuned with contrastive learning excel, finding that implicit cross-modal alignment from generative pretraining enables lightweight refinement, and proposes a Language-Centric Omnimodal Embedding framework that achieves state-of-the-art performance across modalities, with a Generation-Representation Scaling Law linking generative quality to representation upper bounds.

Recent multimodal embedding approaches leveraging multimodal large language models (MLLMs) fine-tuned with contrastive learning (CL) have shown promising results, yet the underlying reasons behind their superiority remain underexplored. This work argues that a crucial advantage of MLLM-based approaches stems from implicit cross-modal alignment achieved during generative pretraining, where the language decoder learns to exploit multimodal signals within a shared representation space for generating unimodal outputs. Through analysis of anisotropy and kernel similarity structure, we empirically confirm that latent alignment emerges within MLLM representations, allowing CL to serve as a lightweight refinement stage. Leveraging this insight, we propose a Language-Centric Omnimodal Embedding framework, termed LCO-Emb. Extensive experiments across diverse backbones and benchmarks demonstrate its effectiveness, achieving state-of-the-art performance across modalities. Furthermore, we identify a Generation-Representation Scaling Law (GRSL), showing that the representational capabilities gained through contrastive refinement scales positively with the MLLM's generative capabilities. This suggests that improving generative abilities evolves as an effective paradigm for enhancing representation quality. We provide a theoretical explanation of GRSL, which formally links the MLLM's generative quality to the upper bound on its representation performance, and validate it on a challenging, low-resource visual-document retrieval task, showing that continual generative pretraining before CL can further enhance the potential of a model's embedding capabilities. Codes, models, and resources are available at https://github.com/LCO-Embedding/LCO-Embedding.

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