A Lightweight Advertisement Ecosystem Simulation Platform for Security Analysis

Chenjia Yu, M. Gheisari, Yang Liu
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引用次数: 1

Abstract

Based on the statistics, advertisements (ads) generate more than 80% of companies' revenues. However, the complexity of the ads ecosystem blurs the boundaries of responsibility between companies. It can not analyze privacy and security issues in such an ecosystem. For example, collecting user information without user consent for data analysis and displaying ads will cause privacy leakage. But we can not explain which types of the company need to take measures to protect privacy. In our paper, to clarify the responsibility of companies in the advertisement ecosystem, we divide them into six types of entities according to their needs and functions. Then, we design a lightweight simulation platform to illustrate the advertisement ecosystem and support security and privacy analysis. Finally, we take personal ads recommendations based on federated learning as an example to verify the feasibility for privacy and security analysis in this platform.
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面向安全分析的轻型广告生态系统仿真平台
据统计,广告(ads)产生的收入占公司收入的80%以上。然而,广告生态系统的复杂性模糊了公司之间责任的界限。它无法在这样的生态系统中分析隐私和安全问题。例如,在未经用户同意的情况下收集用户信息进行数据分析和展示广告,会造成隐私泄露。但我们无法解释哪些类型的公司需要采取措施来保护隐私。在本文中,为了明确企业在广告生态系统中的责任,我们根据企业的需求和功能将其划分为六类实体。然后,我们设计了一个轻量级的仿真平台来说明广告生态系统,并支持安全和隐私分析。最后,以基于联邦学习的个人广告推荐为例,验证了该平台进行隐私和安全分析的可行性。
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