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Title

NN-QuPiD Attack: Neural Network-Based Privacy Quantification Model for Private Information Retrieval Protocols.

Authors

Khan, Rafiullah; Ullah, Mohib; Khan, Atif; Uddin, Muhammad Irfan; Al-Yahya, Maha

Abstract

Web search engines usually keep users' profiles for multiple purposes, such as result ranking and relevancy, market research, and targeted advertisements. However, user web search history may contain sensitive and private information about the user, such as health condition, personal interests, and affiliations that may infringe users' privacy since a user's identity may be exposed and misused by third parties. Numerous techniques are available to address privacy infringement, including Private Information Retrieval (PIR) protocols that use peer nodes to preserve privacy. Previously, we have proved that PIR protocols are vulnerable to the QuPiD Attack. In this research, we proposed NN-QuPiD Attack, an improved version of QuPiD Attack that uses an Artificial Neural Network (RNN) based model to associate queries with their original users. The results show that the NN-QuPiD Attack gave 0.512 Recall with the Precision of 0.923, whereas simple QuPiD Attack gave 0.49 Recall with the Precision of 0.934 with the same data.

Subjects

WEB search engines; INFORMATION retrieval; INFORMATION modeling; ARTIFICIAL neural networks; PRIVACY; INTERNET searching

Publication

Complexity, 2021, p1

ISSN

1076-2787

Publication type

Academic Journal

DOI

10.1155/2021/6651662

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