Information-Theoretically Private Matrix Multiplication From MDS-Coded Storage
Jinbao Zhu, Songze Li, and Jie Li

TL;DR
This paper introduces new information-theoretic strategies for private matrix multiplication in distributed MDS-coded storage systems, ensuring privacy against colluding servers while optimizing communication, computation, and storage overheads.
Contribution
It proposes novel strategies for private matrix multiplication that improve privacy guarantees and efficiency over existing methods in distributed coded storage systems.
Findings
Significant reduction in communication and computation overheads for PSMM.
Reduced storage overhead for FPMM compared to PIR-based strategies.
Enhanced privacy guarantees against colluding servers.
Abstract
We study two problems of private matrix multiplication, over a distributed computing system consisting of a master node, and multiple servers that collectively store a family of public matrices using Maximum-Distance-Separable (MDS) codes. In the first problem of Private and Secure Matrix Multiplication (PSMM) from colluding servers, the master intends to compute the product of its confidential matrix with a target matrix stored on the servers, without revealing any information about and the index of target matrix to some colluding servers. In the second problem of Fully Private Matrix Multiplication (FPMM) from colluding servers, the matrix is also selected from another family of public matrices stored at the servers in MDS form. In this case, the indices of the two target matrices should both be kept private from colluding servers. We develop…
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Taxonomy
TopicsCryptography and Data Security · Stochastic Gradient Optimization Techniques · Random Matrices and Applications
