4.7 Article

Probabilistic Knowledge Transfer for Lightweight Deep Representation Learning

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2020.2995884

Keywords

Task analysis; Knowledge engineering; Adaptation models; Data models; Neural networks; Training; Probability distribution; Knowledge transfer (KT); lightweight deep learning (DL); metric learning; neural network distillation; representation learning

Funding

  1. European Union [European Social Fund (ESF)] through the Operational Programme Human Resources Development, Education and Lifelong Learning 2014-2020 [MIS 5047925]

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The novel probabilistic knowledge transfer (PKT) method proposed in this article allows for transferring knowledge from a large deep learning model to a smaller, faster model by retaining as much information as possible, expressed through the teacher model. PKT outperforms existing state-of-the-art KT techniques and enables novel applications, demonstrated through extensive experiments on challenging data sets.
Knowledge-transfer (KT) methods allow for transferring the knowledge contained in a large deep learning model into a more lightweight and faster model. However, the vast majority of existing KT approaches are designed to handle mainly classification and detection tasks. This limits their performance on other tasks, such as representation/metric learning. To overcome this limitation, a novel probabilistic KT (PKT) method is proposed in this article. PKT is capable of transferring the knowledge into a smaller student model by keeping as much information as possible, as expressed through the teacher model. The ability of the proposed method to use different kernels for estimating the probability distribution of the teacher and student models, along with the different divergence metrics that can be used for transferring the knowledge, allows for easily adapting the proposed method to different applications. PKT outperforms several existing state-of-the-art KT techniques, while it is capable of providing new insights into KT by enabling several novel applications, as it is demonstrated through extensive experiments on several challenging data sets.

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