Feb. 7, 2024, 5:42 a.m. | Saswat Das Marco Romanelli Ferdinando Fioretto

cs.LG updates on arXiv.org arxiv.org

Ensuring privacy-preserving inference on cryptographically secure data is a well-known computational challenge. To alleviate the bottleneck of costly cryptographic computations in non-linear activations, recent methods have suggested linearizing a targeted portion of these activations in neural networks. This technique results in significantly reduced runtimes with often negligible impacts on accuracy. In this paper, we demonstrate that such computational benefits may lead to increased fairness costs. Specifically, we find that reducing the number of ReLU activations disproportionately decreases the accuracy for …

accuracy challenge computational cs.cr cs.cy cs.lg data impact impacts inference linear linearization networks neural networks non-linear privacy runtimes

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