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Reinforced Multi-Teacher Selection for Knowledge Distillation

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arxiv 2012.06048 v2 pith:OOZSR6NO submitted 2020-12-11 cs.CL cs.LG

Reinforced Multi-Teacher Selection for Knowledge Distillation

classification cs.CL cs.LG
keywords modelmodelsteacherdistillationstudentknowledgeassignmethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In natural language processing (NLP) tasks, slow inference speed and huge footprints in GPU usage remain the bottleneck of applying pre-trained deep models in production. As a popular method for model compression, knowledge distillation transfers knowledge from one or multiple large (teacher) models to a small (student) model. When multiple teacher models are available in distillation, the state-of-the-art methods assign a fixed weight to a teacher model in the whole distillation. Furthermore, most of the existing methods allocate an equal weight to every teacher model. In this paper, we observe that, due to the complexity of training examples and the differences in student model capability, learning differentially from teacher models can lead to better performance of student models distilled. We systematically develop a reinforced method to dynamically assign weights to teacher models for different training instances and optimize the performance of student model. Our extensive experimental results on several NLP tasks clearly verify the feasibility and effectiveness of our approach.

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