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Neural Network Training on Encrypted Data with TFHE (2401.16136v1)
Published 29 Jan 2024 in cs.CR and cs.AI
Abstract: We present an approach to outsourcing of training neural networks while preserving data confidentiality from malicious parties. We use fully homomorphic encryption to build a unified training approach that works on encrypted data and learns quantized neural network models. The data can be horizontally or vertically split between multiple parties, enabling collaboration on confidential data. We train logistic regression and multi-layer perceptrons on several datasets.
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