Archive/Efficient Verifiable Computation for Support Vector Machine Training over Secret-Shared Data
Efficient Verifiable Computation for Support Vector Machine Training over Secret-Shared Data
Shimao Yu, Liang Su, Hanlin Zhang
3. Juli 2026
en

Abstract

The outsourcing of machine learning tasks, such as Support Vector Machine (SVM) training, to cloud platforms poses significant security challenges, primarily concerning the confidentiality of sensitive training data and the integrity of computation results returned by potentially malicious servers. To address these challenges, this paper proposes a lightweight, privacy-preserving, and verifiable SVM training scheme designed for resource-constrained clients. Our scheme leverages a replicated secret sharing protocol to securely distribute training data and model parameters across multiple non-colluding servers, executing the entire collaborative training process in the share domain without leaking plaintext information. Furthermore, to guarantee computational correctness, we introduce a novel interval-based index point storage strategy combined with a bilinear mapping-based parameter label consistency check. This verifiable mechanism enables clients to perform sampled, lightweight audits of the cloud’s intermediate training states and final outputs. Experimental evaluations on multiple typical datasets demonstrate that the proposed scheme maintains stable classification performance while achieving an order-of-magnitude decrease in training runtime compared with existing ciphertext-based methods, offering a highly configurable trade-off among verification coverage, computational overhead, and storage cost.

IPC Classification

G06

Keywords

efficientverifiablecomputationsupportvectormachinetrainingsecret-shareddatacryptographyoutsourcinglearningtaskssuchcloudplatformsposessignificantsecuritychallengesprimarilyconcerningconfidentialitysensitive
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