Section 01
TRACER: A New Method for Robust Multimodal Finetuning via Persistent Regularization (Introduction)
TRACER is an innovative method for multimodal model finetuning, aiming to solve the problems of catastrophic forgetting and out-of-distribution (OOD) robustness degradation in traditional finetuning. Its core innovation is the proposal of a weighted moving average (WMA) teacher model to replace the traditional exponential moving average (EMA) teacher, enabling persistent regularization, which improves target task performance while retaining general knowledge from the pre-training phase.