Multi-stage Balanced Distillation: Addressing Long-tail Challenges In Sequence-level Knowledge Distillation · The Large Language Model Bible Contribute to LLM-Bible

Multi-stage Balanced Distillation: Addressing Long-tail Challenges In Sequence-level Knowledge Distillation

Zhou Yuhang, Zhu Jing, Xu Paiheng, Liu Xiaoyu, Wang Xiyao, Koutra Danai, Ai Wei, Huang Furong. Arxiv 2024

[Paper]    
Distillation Efficiency And Optimization Reinforcement Learning Tools Training Techniques

Large language models (LLMs) have significantly advanced various natural language processing tasks, but deploying them remains computationally expensive. Knowledge distillation (KD) is a promising solution, enabling the transfer of capabilities from larger teacher LLMs to more compact student models. Particularly, sequence-level KD, which distills rationale-based reasoning processes instead of merely final outcomes, shows great potential in enhancing students’ reasoning capabilities. However, current methods struggle with sequence level KD under long-tailed data distributions, adversely affecting generalization on sparsely represented domains. We introduce the Multi-Stage Balanced Distillation (BalDistill) framework, which iteratively balances training data within a fixed computational budget. By dynamically selecting representative head domain examples and synthesizing tail domain examples, BalDistill achieves state-of-the-art performance across diverse long-tailed datasets, enhancing both the efficiency and efficacy of the distilled models.

Similar Work