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arxiv: 2012.12591 · v1 · pith:CMBWVRAKnew · submitted 2020-12-23 · 💻 cs.LG · cs.CR

Comparison of Privacy-Preserving Distributed Deep Learning Methods in Healthcare

classification 💻 cs.LG cs.CR
keywords learningtrainingdistributedsplitalternatebetterclassificationcompare
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In this paper, we compare three privacy-preserving distributed learning techniques: federated learning, split learning, and SplitFed. We use these techniques to develop binary classification models for detecting tuberculosis from chest X-rays and compare them in terms of classification performance, communication and computational costs, and training time. We propose a novel distributed learning architecture called SplitFedv3, which performs better than split learning and SplitFedv2 in our experiments. We also propose alternate mini-batch training, a new training technique for split learning, that performs better than alternate client training, where clients take turns to train a model.

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