Spurious Forgetting in Continual Learning of Language Models
- URL: http://arxiv.org/abs/2501.13453v1
- Date: Thu, 23 Jan 2025 08:09:54 GMT
- Title: Spurious Forgetting in Continual Learning of Language Models
- Authors: Junhao Zheng, Xidi Cai, Shengjie Qiu, Qianli Ma,
- Abstract summary: Recent advancements in large language models (LLMs) reveal a perplexing phenomenon in continual learning.
Despite extensive training, models experience significant performance declines.
This study proposes that such performance drops often reflect a decline in task alignment rather than true knowledge loss.
- Score: 20.0936011355535
- License:
- Abstract: Recent advancements in large language models (LLMs) reveal a perplexing phenomenon in continual learning: despite extensive training, models experience significant performance declines, raising questions about task alignment and underlying knowledge retention. This study first explores the concept of "spurious forgetting", proposing that such performance drops often reflect a decline in task alignment rather than true knowledge loss. Through controlled experiments with a synthesized dataset, we investigate the dynamics of model performance during the initial training phases of new tasks, discovering that early optimization steps can disrupt previously established task alignments. Our theoretical analysis connects these shifts to orthogonal updates in model weights, providing a robust framework for understanding this behavior. Ultimately, we introduce a Freezing strategy that fix the bottom layers of the model, leading to substantial improvements in four continual learning scenarios. Our findings underscore the critical distinction between task alignment and knowledge retention, paving the way for more effective strategies in continual learning.
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