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Ensemble Knowledge Distillation for Learning Improved and Efficient Networks

Umar Asif, Jianbin Tang, Harrer Stefan

2020Frontiers in artificial intelligence and applications18 citationsDOIOpen Access PDF

Abstract

Ensemble models comprising of deep Convolutional Neural Networks (CNN) have shown significant improvements in model generalization but at the cost of large computation and memory requirements. In this paper, we present a framework for learning compact CNN models with improved classification performance and model generalization. For this, we propose a CNN architecture of a compact student model with parallel branches which are trained using ground truth labels and information from high capacity teacher networks in an ensemble learning fashion. Our framework provides two main benefits: i) Distilling knowledge from different teachers into the student network promotes heterogeneity in learning features at different branches of the student network and enables the network to learn diverse solutions to the target problem. ii) Coupling the branches of the student network through ensembling encourages collaboration and improves the quality of the final predictions by reducing variance in the network outputs. Experiments on the well established CIFAR-10 and CIFAR-100 datasets show that our Ensemble Knowledge Distillation (EKD) improves classification accuracy and model generalization especially in situations with limited training data. Experiments also show that our EKD based compact networks outperform in terms of mean accuracy on the test datasets compared to other knowledge distillation based methods.

Topics & Concepts

Ensemble learningDistillationComputer scienceArtificial intelligenceMachine learningChemistryChromatographyNeural Networks and Applications
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