Poster
in
Workshop: SCOPE: SCALABLE OPTIMIZATION FOR EFFICIENT AND ADPATIVE FOUNDATION MODELS
Enhanced Continual Learning of Vision-Language Models with Model Fusion
Haoyuan Gao · Zicong Zhang · Yuqi Wei · Linglan Zhao · Guilin Li · Yexin Li · Linghe Kong · Weiran Huang
Keywords: [ multi-domain task incremental learning ] [ continual learning ] [ model fusion ] [ vision-language models ]
Vision-Language Models (VLMs) represent a breakthrough in artificial intelligence by integrating visual and textual modalities to achieve impressive zero-shot capabilities. However, VLMs are susceptible to catastrophic forgetting when sequentially fine-tuned on multiple downstream tasks. Existing continual learning methods for VLMs often rely heavily on additional reference datasets, compromise zero-shot performance, or are limited to parameter-efficient fine-tuning scenarios.In this paper, we propose Continual Decoupling-Unifying (ConDU), a novel approach, by introducing model fusion into continual learning for VLMs. ConDU maintains a unified model along with task triggers and prototype sets, employing an iterative process of decoupling task-specific models for previous tasks and unifying them with the model for the newly learned task. Additionally, we introduce an inference strategy for zero-shot scenarios by aggregating predictions from multiple decoupled task-specific models.Extensive experiments across various settings show that ConDU achieves up to a 2\% improvement in average performance across all seen tasks compared to state-of-the-art baselines, while also enhancing zero-shot capabilities relative to the original VLM.