MAGIC: Achieving Superior Model Merging via Magnitude Calibration
By: Yayuan Li , Jian Zhang , Jintao Guo and more
Potential Business Impact:
Merges AI models to make them smarter.
The proliferation of pre-trained models has given rise to a wide array of specialised, fine-tuned models. Model merging aims to merge the distinct capabilities of these specialised models into a unified model, requiring minimal or even no additional training. A core objective of model merging is to ensure the merged model retains the behavioural characteristics of the specialised models, typically achieved through feature alignment. We identify that features consist of two critical components: direction and magnitude. Prior research has predominantly focused on directional alignment, while the influence of magnitude remains largely neglected, despite its pronounced vulnerability to perturbations introduced by common merging operations (e.g., parameter fusion and sparsification). Such perturbations to magnitude inevitably lead to feature deviations in the merged model from the specialised models, resulting in subsequent performance degradation. To address this, we propose MAGnItude Calibration (MAGIC), a plug-and-play framework that rectifies layer-wise magnitudes in feature and weight spaces, with three variants. Specifically, our Feature Space Calibration (FSC) realigns the merged model's features using a small set of unlabelled data, while Weight Space Calibration (WSC) extends this calibration to the weight space without requiring additional data. Combining these yields Dual Space Calibration (DSC). Comprehensive experiments demonstrate that MAGIC consistently boosts performance across diverse Computer Vision tasks (+4.3% on eight datasets) and NLP tasks (+8.0% on Llama) without additional training. Our code is available at: https://github.com/lyymuwu/MAGIC
Similar Papers
Bridging Training and Merging Through Momentum-Aware Optimization
Machine Learning (CS)
Makes AI learn faster and combine better.
MagCache: Fast Video Generation with Magnitude-Aware Cache
CV and Pattern Recognition
Makes AI videos create faster, look better.
Weight Weaving: Parameter Pooling for Data-Free Model Merging
Machine Learning (CS)
Combines AI models without needing more data.