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Adaptively Secure Efficient (H)IBE over Ideal Lattice with Short Parameters. | LitMetric

Adaptively Secure Efficient (H)IBE over Ideal Lattice with Short Parameters.

Entropy (Basel)

State Key Laboratory of Networking and Switching Technology, Beijing University of Posts and Telecommunications, Beijing 100876, China.

Published: November 2020

AI Article Synopsis

  • Identity-based encryption (IBE) and its hierarchical version (HIBE) authenticate users using their identities, but existing schemes may be vulnerable to quantum attacks.
  • Recent focus has shifted to lattice-based IBE and HIBE due to their potential resistance to such attacks, but they often require larger public parameter sizes associated with user identities.
  • The proposed solution introduces a flexible trade-off mechanism that significantly reduces the size of public parameters by dividing user identities into segments, achieving up to 93.8% size reduction with only a slight increase in computational cost, while maintaining security against modern threats.

Article Abstract

Identity-based encryption (IBE), and its hierarchical extension (HIBE), are interesting cryptographic primitives that aim at the implicit authentication on the users' public keys by using users' identities directly. During the past several decades, numerous elegant pairing-based (H)IBE schemes were proposed. However, most pairing-related security assumptions suffer from known quantum algorithmic attacks. Therefore, the construction of lattice-based (H)IBE became one of the hot directions in recent years. In the setting of most existing lattice-based (H)IBE schemes, each bit of a user's identity is always associated with a parameter matrix. This always leads to drastic but unfavorable increases in the sizes of the system public parameters. To overcome this issue, we propose a flexible trade-off mechanism between the size of the public parameters and the involved computational cost using the blocking technique. More specifically, we divide an identity into l' segments and associate each segment with a matrix, while increasing the lattice modulo slightly for maintaining the same security level. As a result, for the setting of 160-bit identities, we show that the size of the public parameters can be reduced by almost 89.7% (resp. 93.8%) while increasing the computational cost by merely 5.2% (resp. 12.25%) when l' is a set of 16 (resp. 8). Finally, our IBE scheme is extended to an HIBE scheme, and both of them are proved to achieve the indistinguishability of ciphertexts against adaptively chosen identity and chosen plaintext attack (IND-ID-CPA) in the standard model, assuming that the well-known ring learning with error (RLWE) problem over the involved ideal lattices is intractable, even in the post-quantum era.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7712582PMC
http://dx.doi.org/10.3390/e22111247DOI Listing

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