A Privacy-Preserving Personalized Service Framework through Bayesian Game in Social IoT

Renwan Bi, Qianxin Chen, Lei Chen, Jinbo Xiong, Dapeng Wu

Research output: Contribution to journalArticlepeer-review

16 Scopus citations

Abstract

It is enormously challenging to achieve a satisfactory balance between quality of service (QoS) and users' privacy protection along with measuring privacy disclosure in social Internet of Things (IoT). We propose a privacy-preserving personalized service framework (Persian) based on static Bayesian game to provide privacy protection according to users' individual security requirements in social IoT. Our approach quantifies users' individual privacy preferences and uses fuzzy uncertainty reasoning to classify users. These classification results facilitate trustworthy cloud service providers (CSPs) in providing users with corresponding levels of services. Furthermore, the CSP makes a strategic choice with the goal of maximizing reputation through playing a decision-making game with potential adversaries. Our approach uses Shannon information entropy to measure the degree of privacy disclosure according to the probability of game mixed strategy equilibrium. Experimental results show that Persian guarantees QoS and effectively protects user privacy despite the existence of adversaries.

Original languageEnglish
Article number8891889
JournalWireless Communications and Mobile Computing
Volume2020
DOIs
StatePublished - 2020

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