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Zero-Knowledge Proofs of Training for Deep Neural Networks

Kasra Abbaszadeh, Christodoulos Pappas, Jonathan Katz, Dimitrios Papadopoulos

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Abstract

A zero-knowledge proof of training (zkPoT) enables a party to prove that they have correctly trained a committed model based on a committed dataset without revealing any additional information about the model or the dataset. An ideal zkPoT should offer provable security and privacy guarantees, succinct proof size and verifier runtime, and practical prover efficiency. In this work, we present Kaizen, a zkPoT targeted for deep neural networks (DNNs) that achieves all these goals at once. Our construction enables a prover to iteratively train their model via (mini-batch) gradient descent, where the number of iterations need not be fixed in advance; at the end of each iteration, the prover generates a commitment to the trained model parameters attached with a succinct zkPoT, attesting to the correctness of the executed iterations. The proof size and verifier time are independent of the number of iterations.

Topics & Concepts

Gas meter proverComputer scienceCorrectnessMathematical proofArtificial neural networkZero-knowledge proofZero (linguistics)Ideal (ethics)Theoretical computer scienceGradient descentArtificial intelligenceAlgorithmCryptographyMathematicsGeometryLinguisticsEpistemologyPhilosophyAdversarial Robustness in Machine LearningCryptography and Data SecurityAdvanced Neural Network Applications
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