Autoregressive Knowledge Distillation Through Imitation Learning · The Large Language Model Bible Contribute to LLM-Bible

Autoregressive Knowledge Distillation Through Imitation Learning

Lin Alexander, Wohlwend Jeremy, Chen Howard, Lei Tao. Arxiv 2020

[Paper]    
Applications Distillation Efficiency And Optimization Ethics And Bias GPT Language Modeling Model Architecture Pretraining Methods Reinforcement Learning

The performance of autoregressive models on natural language generation tasks has dramatically improved due to the adoption of deep, self-attentive architectures. However, these gains have come at the cost of hindering inference speed, making state-of-the-art models cumbersome to deploy in real-world, time-sensitive settings. We develop a compression technique for autoregressive models that is driven by an imitation learning perspective on knowledge distillation. The algorithm is designed to address the exposure bias problem. On prototypical language generation tasks such as translation and summarization, our method consistently outperforms other distillation algorithms, such as sequence-level knowledge distillation. Student models trained with our method attain 1.4 to 4.8 BLEU/ROUGE points higher than those trained from scratch, while increasing inference speed by up to 14 times in comparison to the teacher model.

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