Puncturable Encryption: A Generic Construction from Delegatable Fully Key-Homomorphic Encryption
July 13, 2020 Β· Declared Dead Β· π IACR Cryptology ePrint Archive
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Authors
Willy Susilo, Dung Hoang Duong, Huy Quoc Le, Josef Pieprzyk
arXiv ID
2007.06353
Category
cs.CR: Cryptography & Security
Citations
20
Venue
IACR Cryptology ePrint Archive
Last Checked
3 months ago
Abstract
Puncturable encryption (PE), proposed by Green and Miers at IEEE S&P 2015, is a kind of public key encryption that allows recipients to revoke individual messages by repeatedly updating decryption keys without communicating with senders. PE is an essential tool for constructing many interesting applications, such as asynchronous messaging systems, forward-secret zero round-trip time protocols, public-key watermarking schemes and forward-secret proxy re-encryptions. This paper revisits PEs from the observation that the puncturing property can be implemented as efficiently computable functions. From this view, we propose a generic PE construction from the fully key-homomorphic encryption, augmented with a key delegation mechanism (DFKHE) from Boneh et al. at Eurocrypt 2014. We show that our PE construction enjoys the selective security under chosen plaintext attacks (that can be converted into the adaptive security with some efficiency loss) from that of DFKHE in the standard model. Basing on the framework, we obtain the first post-quantum secure PE instantiation that is based on the learning with errors problem, selective secure under chosen plaintext attacks (CPA) in the standard model. We also discuss about the ability of modification our framework to support the unbounded number of ciphertext tags inspired from the work of Brakerski and Vaikuntanathan at CRYPTO 2016.
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