LGAIMay 29, 2025

Decom-Renorm-Merge: Model Merging on the Right Space Improves Multitasking

Berkeley
arXiv:2505.23117v22 citationsh-index: 19
Originality Incremental advance
AI Analysis

This work improves multitasking efficiency in large-scale training by enabling better model merging, though it is incremental as it builds on existing merging methods.

The paper tackles the problem of model merging for multitasking by addressing the issue that existing methods assume identical functions for weight matrix entries, which is problematic in finetuned networks. It introduces Decom-Renorm-Merge (DRM), which uses Singular Value Decomposition to align weight matrices into a joint space, outperforming state-of-the-art techniques across various models like ViT, DeBERTa, T5, and Llama3.1-8B.

In the era of large-scale training, model merging has evolved into a tool for creating multitasking models efficiently. It enables the knowledge of models to be fused, without the need for heavy computation as required in traditional multitask learning. Existing merging methods often assume that entries at identical positions in weight matrices serve the same function, enabling straightforward entry-wise comparison and merging. However, this assumption overlooks the complexity of finetuned neural networks, where neurons may develop distinct feature compositions, making direct entry-wise merging problematic. We present Decom-Renorm-Merge (DRM), a simple yet effective approach that leverages Singular Value Decomposition to decompose and coordinate weight matrices into an aligned joint space, where entry-wise merging becomes possible. We showcase the effectiveness of DRM across various settings ranging from smaller encoder-based such as ViT and DeBERTa, encoder-decoder-based such as T5, and larger decoder-based such as Llama3.1-8B. Our experimental results show that DRM outperforms several state-of-the-art merging techniques across full finetuning and low-rank adaptation settings. Moreover, our analysis reveals renormalization as the crucial component for creating a robust and even joint space for merging, significantly contributing to the method's performance.

Foundations

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