Keeping Yourself is Important in Downstream Tuning Multimodal Large Language Model
By: Wenke Huang , Jian Liang , Xianda Guo and more
Potential Business Impact:
Teaches AI to understand pictures and words better.
Multi-modal Large Language Models (MLLMs) integrate visual and linguistic reasoning to address complex tasks such as image captioning and visual question answering. While MLLMs demonstrate remarkable versatility, MLLMs appears limited performance on special applications. But tuning MLLMs for downstream tasks encounters two key challenges: Task-Expert Specialization, where distribution shifts between pre-training and target datasets constrain target performance, and Open-World Stabilization, where catastrophic forgetting erases the model general knowledge. In this work, we systematically review recent advancements in MLLM tuning methodologies, classifying them into three paradigms: (I) Selective Tuning, (II) Additive Tuning, and (III) Reparameterization Tuning. Furthermore, we benchmark these tuning strategies across popular MLLM architectures and diverse downstream tasks to establish standardized evaluation analysis and systematic tuning principles. Finally, we highlight several open challenges in this domain and propose future research directions. To facilitate ongoing progress in this rapidly evolving field, we provide a public repository that continuously tracks developments: https://github.com/WenkeHuang/Awesome-MLLM-Tuning.
Similar Papers
Self-Improvement in Multimodal Large Language Models: A Survey
Computation and Language
Makes AI smarter with more kinds of information.
How to Teach Large Multimodal Models New Skills
Artificial Intelligence
Teaches AI new things without forgetting old ones.
Towards Alignment-Centric Paradigm: A Survey of Instruction Tuning in Large Language Models
Computation and Language
Teaches AI to follow instructions better.