Improving Data Utility Through Game Theory in Personalized Differential Privacy

来源 :计算机科学技术学报(英文版) | 被引量 : 0次 | 上传用户:gengfu123456789
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Due to dramatically increasing information published in social networks,privacy issues have given rise to public concs.Although the presence of differential privacy provides privacy protection with theoretical foundations,the trade-off between privacy and data utility still demands further improvement.However,most existing studies do not consider the quantitative impact of the adversary when measuring data utility.In this paper,we firstly propose a personalized differential privacy method based on social distance.Then,we analyze the maximum data utility when users and adversaries are blind to the strategy sets of each other.We formalize all the payoff functions in the differential privacy sense,which is followed by the establishment of a static Bayesian game.The trade-off is calculated by deriviug the Bayesian Nash equilibrium with a modified reinforcement leing algorithm.The proposed method achieves fast convergence by reducing the cardinality from n to 2.In addition,the in-place trade-off can maximize the user’s data utility if the action sets of the user and the adversary are public while the strategy sets are unrevealed.Our extensive experiments on the real-world dataset prove the proposed model is effective and feasible.
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2019年1月9日,由中国工程机械工业协会路面与压实机械分会、中国工程机械学会路面与压实机械分会、广东省公路学会机械与材料专业委员会和广东省公路学会道路工程专业委员会
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