Symmetric Private Polynomial Computation From Lagrange Encoding
Jinbao Zhu, Qifa Yan, Xiaohu Tang, Songze Li

TL;DR
This paper introduces a novel symmetric private polynomial computation scheme using Lagrange encoding for distributed storage systems, achieving improved rates and security guarantees in the presence of malicious and unresponsive servers.
Contribution
It proposes a new symmetric PPC scheme that generalizes previous models and outperforms existing schemes in terms of PPC rate and security in coded storage systems.
Findings
Achieves a PPC rate of 1 - (G(K+X-1)+T+2B)/(N-U).
Provides a secrecy rate formula ensuring data privacy.
Analyzes upload cost, query complexity, and server computation complexity.
Abstract
The problem of -secure -colluding symmetric Private Polynomial Computation (PPC) from coded storage system with Byzantine and unresponsive servers is studied in this paper. Specifically, a dataset consisting of files is stored across distributed servers according to Maximum Distance Separable (MDS) codes such that any group of up to colluding servers can not learn anything about the data files. A user wishes to privately evaluate one out of a set of candidate polynomial functions over the files from the system, while guaranteeing that any colluding servers can not learn anything about the identity of the desired function and the user can not learn anything about the data files more than the desired polynomial function evaluations, in the presence of Byzantine servers that can send arbitrary responses maliciously to confuse the user and…
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Taxonomy
TopicsCryptography and Data Security · Advanced Data Storage Technologies · Privacy-Preserving Technologies in Data
