Abstract

As people’s awareness of the issue of privacy leakage continues to increase, and the demand for privacy protection continues to increase, there is an urgent need for some effective methods or means to achieve the purpose of protecting privacy. So far, there have been many achievements in the research of location-based privacy services, and it can effectively protect the location privacy of users. However, there are few research results that require privacy protection, and the privacy protection system needs to be improved. Aiming at the shortcomings of traditional differential privacy protection, this paper designs a differential privacy protection mechanism based on interactive social networks. Under this mechanism, we have proved that it meets the protection conditions of differential privacy and prevents the leakage of private information with the greatest possibility. In this paper, we establish a network evolution game model, in which users only play games with connected users. Then, based on the game model, a dynamic equation is derived to express the trend of the proportion of users adopting privacy protection settings in the network over time, and the impact of the benefit-cost ratio on the evolutionarily stable state is analyzed. A real data set is used to verify the feasibility of the model. Experimental results show that the model can effectively describe the dynamic evolution of social network users’ privacy protection behaviors. This model can help social platforms design effective security services and incentive mechanisms, encourage users to adopt privacy protection settings, and promote the deployment of privacy protection mechanisms in the network.

Highlights

  • Online social networks are changing people’s daily behaviors, bringing great convenience to people’s lives

  • In the centralized service model, online social network service providers are the core of the entire system architecture, and users are deprived of the right to control personal data

  • Aiming at the status quo that traditional differential privacy methods cannot be applied to interactive social networks, the subject research first designed a novel differential privacy protection mechanism based on interaction factors

Read more

Summary

Introduction

Online social networks are changing people’s daily behaviors, bringing great convenience to people’s lives. The main reason is that these studies have neglected the social network service provider’s response to users The root of this threat is the centralized social network service structure. Based on the observation and analysis of the traditional differential privacy protection mechanism, this paper verifies the effectiveness of differential privacy and analyzes the necessity and infeasibility of differential privacy on social networks. The subject designed a differential privacy mechanism based on interactive social networks, clarified in detail the advantages of improved interactive differential privacy compared to traditional differential privacy and its feasibility on social networks, and conducted a strong verification of its effectiveness. The experimental results show that the model proposed in this paper can effectively portray user privacy protection behaviors in social networks

Related Work
Social Network Big Data Analysis Platform
Improved Differential Privacy Algorithm
Analysis of the Effectiveness of Interactive Differential
Experimental Analysis
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call