Multi-Message Private Information Retrieval: A Scalar Linear Solution

2022 58th Annual Allerton Conference on Communication, Control, and Computing (Allerton)(2022)

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摘要
In recent years, the Multi-message Private In-formation Retrieval (MPIR) problem has received significant attention from the research community. In this problem, a user wants to privately retrieve $D$ messages out of $K$ messages whose identical copies are stored on $N$ remote servers, while maximizing the download rate. The MPIR schemes can find applications in many practical scenarios and can serve as an important building block for private computation and private machine learning applications. The existing solutions for MPIR require a large degree of subpacketization, which can result in large overheads, high complexity, and impose constraints on the system parameters. These factors can limit practical applications of the existing solutions. In this paper, we present a methodology for the design of scalar-linear MPIR schemes. Such schemes are easy to implement in practical systems as they do not require partitioning of messages into smaller size sub-messages and impose less stringent constraints on the minimum required size of the messages. Focusing on the case of $N=D+1$ , we show that when $D$ divides $K$ , our scheme achieves the capacity, where the capacity is defined as the maximum achievable download rate. When the divisibility condition does not hold, the performance of our scheme is the same or within a small additive margin compared to the best known scheme that requires a high degree of subpacketization.
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关键词
private computation,private machine learning applications,scalar-linear MPIR schemes,maximum achievable download rate,multimessage private information retrieval,scalar linear solution,research community,divisibility condition,subpacketization degree
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