Online mobile advertising ecosystems provide advertising and analytics services that collect, aggregate, process, and trade a rich amount of consumers' personal data and carry out interest-based ad targeting, which raised serious privacy risks and growing trends of users feeling uncomfortable while using the internet services. In this paper, we address users' privacy concerns by developing an optimal dynamic optimisation cost-effective framework for preserving user privacy for profiling, ads-based inferencing, temporal apps usage behavioral patterns, and interest-based ad targeting. A major challenge in solving this dynamic model is the lack of knowledge of time-varying updates during the profiling process. We formulate a mixed-integer optimisation problem and develop an equivalent problem to show that the proposed algorithm does not require knowledge of time-varying updates in user behavior. Following, we develop an online control algorithm to solve the equivalent problem and overcome the difficulty of solving nonlinear programming by decomposing it into various cases and to achieve a trade-off between user privacy, cost, and targeted ads. We carry out extensive experimentations and demonstrate the proposed framework's applicability by implementing its critical components using POC (Proof Of Concept) `System App'. We compare the proposed framework with other privacy-protecting approaches and investigate whether it achieves better privacy and functionality for various performance parameters.
翻译:在线移动广告生态系统提供广告和分析服务,收集、汇总、处理和交易大量消费者的个人数据,并进行基于兴趣的定向选择,这增加了严重的隐私风险和用户在使用互联网服务时感到不舒服的日益增长的趋势;在本文件中,我们处理用户的隐私关切,方法是制定最佳动态优化框架,保护用户隐私,以便进行特征分析、基于广告的推论、时间应用行为模式和基于利益的目标选择。解决这一动态模式的一个主要挑战是缺乏在特征分析过程中对时间变化式更新的了解。我们制定了混合整数选择问题,并发展了一个类似的问题,以表明拟议的算法并不需要了解用户行为中时间变化式更新的知识。随后,我们开发了在线控制算法,以解决同等问题,克服解决非线性方案编制的困难,将它分解为各种案例,并在用户隐私、成本和有针对性的ads之间实现交易。我们开展了广泛的实验,并通过使用POC(Prooformissionalityality Apperation)实施其关键组成部分,展示了拟议框架的可适用性。