Multi-Modality Expansion and Retention for LLMs through Parameter Merging and Decoupling
Multi-Modality Expansion and Retention for LLMs through Parameter Merging and Decoupling
Fine-tuning Large Language Models (LLMs) with multimodal encoders on modality-specific data expands the modalities that LLMs can handle, leading to the formation of Multimodal LLMs (MLLMs). However, this paradigm heavily relies on resource-intensive and inflexible fine-tuning from scratch with new multimodal data. In this paper, we propose MMER (Multi-modality Expansion and Retention), a training-free approach that integrates existing MLLMs for effective multimodal expansion while retaining their original performance. Specifically, MMER reuses MLLMs' multimodal encoders while merging their LLM parameters. By comparing original and merged LLM parameters, MMER generates binary masks to approximately separate LLM parameters for each modality. These decoupled parameters can independently process modality-specific inputs, reducing parameter conflicts and preserving original MLLMs' fidelity. MMER can also mitigate catastrophic forgetting by applying a similar process to MLLMs fine-tuned on new tasks. Extensive experiments show significant improvements over baselines, proving that MMER effectively expands LLMs' multimodal capabilities while retaining 99% of the original performance, and also markedly mitigates catastrophic forgetting.
Junlin Li、Guodong DU、Jing Li、Sim Kuan Goh、Wenya Wang、Yequan Wang、Fangming Liu、Ho-Kin Tang、Saleh Alharbi、Daojing He、Min Zhang
计算技术、计算机技术
Junlin Li,Guodong DU,Jing Li,Sim Kuan Goh,Wenya Wang,Yequan Wang,Fangming Liu,Ho-Kin Tang,Saleh Alharbi,Daojing He,Min Zhang.Multi-Modality Expansion and Retention for LLMs through Parameter Merging and Decoupling[EB/OL].(2025-05-21)[2025-07-16].https://arxiv.org/abs/2505.17110.点此复制
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