2023
DOI: 10.48550/arxiv.2301.07794
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HCE: Improving Performance and Efficiency with Heterogeneously Compressed Neural Network Ensemble

Abstract: Ensemble learning has gain attention in resent deep learning research as a way to further boost the accuracy and generalizability of deep neural network (DNN) models. Recent ensemble training method explores different training algorithms or settings on multiple sub-models with the same model architecture, which lead to significant burden on memory and computation cost of the ensemble model. Meanwhile, the heurtsically induced diversity may not lead to significant performance gain. We propose a new prespective … Show more

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References 17 publications
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