功能加密与遗忘的帮助

Pierre-Alain Dupont, D. Pointcheval
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引用次数: 3

摘要

功能加密是一个很好的工具,在提供对大型数据库的访问时,它弥合了可用性和隐私之间的差距:在加密的同时,聚合信息可以通过数据库所有者的微调控制获得,数据库所有者可以指定允许用户在数据上计算的功能。不幸的是,允许访问多个函数可能会泄露数据库上的太多信息,因为一旦为特定函数提供了解密能力,就可以无限数量的密文。在内部积的特殊情况下,如果数据库的行或记录包含l个字段,其中有l个独立的内部积功能,则可以提取所有单独的字段。另一方面,使用内积的主要应用程序,如机器学习,需要计算许多内积。本文处理了一种实际的权衡,以便允许计算各种内积,同时仍然保护数据的机密性。为了达到这个目的,我们引入了一个无关的助手,它将用于任何解密查询,以控制数据库上的信息泄漏。它确实应该学习足够的信息来保证数据库的机密性,但不危及查询的隐私。
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Functional Encryption with Oblivious Helper
Functional encryption is a nice tool that bridges the gap between usability and privacy when providing access to huge databases: while being encrypted, aggregated information is available with a fine-tuned control by the owner of the database who can specify the functions he allows users to compute on the data. Unfortunately, giving access to several functions might leak too much information on the database, since once the decryption capability is given for a specific function, this is for an unlimited number of ciphertexts. In the particular case of the inner-product, if rows or records of the database contain l fields on which one got l independent inner-product capabilities, one can extract all the individual fields. On the other hand, the major applications that make use of inner-products, such as machine-learning, need to compute many of them. This paper deals with a practical trade-off in order to allow the computation of various inner-products, while still protecting the confidentiality of the data. To this aim, we introduce an oblivious helper, that will be required for any decryption-query, in order to control the leakage of information on the database. It should indeed learn just enough information to guarantee the confidentiality of the database, but without endangering the privacy of the queries.
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