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HetDAPAC: Distributed Attribute-Based Private Access Control with Heterogeneous Attributes

24 January 2024
S. Meel
S. Ulukus
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Abstract

Verifying user attributes to provide fine-grained access control to databases is fundamental to an attribute-based authentication system. In such systems, either a single (central) authority verifies all attributes, or multiple independent authorities verify individual attributes distributedly to allow a user to access records stored on the servers. While a \emph{central} setup is more communication cost efficient, it causes privacy breach of \emph{all} user attributes to a central authority. Recently, Jafarpisheh et al. studied an information theoretic formulation of the \emph{distributed} multi-authority setup with NNN non-colluding authorities, NNN attributes and KKK possible values for each attribute, called an (N,K)(N,K)(N,K) distributed attribute-based private access control (DAPAC) system, where each server learns only one attribute value that it verifies, and remains oblivious to the remaining N−1N-1N−1 attributes. We show that off-loading a subset of attributes to a central server for verification improves the achievable rate from 12K\frac{1}{2K}2K1​ in Jafarpisheh et al. to 1K+1\frac{1}{K+1}K+11​ in this paper, thus \emph{almost doubling the rate} for relatively large KKK, while sacrificing the privacy of a few possibly non-sensitive attributes.

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