MOYU: A Theoretical Study on Massive Over-activation Yielded Uplifts in LLMs (2406.12569v2)
Abstract: Massive Over-activation Yielded Uplifts(MOYU) is an inherent property of LLMs, and dynamic activation(DA) based on the MOYU property is a clever yet under-explored strategy designed to accelerate inference in these models. Existing methods that utilize MOYU often face a significant 'Impossible Trinity': struggling to simultaneously maintain model performance, enhance inference speed, and extend applicability across various architectures. Due to the theoretical ambiguities surrounding MOYU, this paper elucidates the root cause of the MOYU property and outlines the mechanisms behind two primary limitations encountered by current DA methods: 1) history-related activation uncertainty, and 2) semantic-irrelevant activation inertia. Our analysis not only underscores the limitations of current dynamic activation strategies within large-scale LLaMA models but also proposes opportunities for refining the design of future sparsity schemes.
- Chi Ma (15 papers)
- Mincong Huang (7 papers)
- Chao Wang (555 papers)
- Yujie Wang (103 papers)
- Lei Yu (234 papers)