基于深度学习的个性化网络搜索隐私保护即兴设计

S. K. Bhandare, A. Kapse
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引用次数: 0

摘要

个性化网页搜索(PWS)在提高互联网上各种搜索服务的质量方面已经证明了它的有效性。然而,有证据表明,用户在搜索过程中不愿透露自己的私人信息已经成为PWS广泛传播的主要障碍。我们研究了将用户偏好建模为分层用户配置文件的PWS应用程序中的隐私保护。我们提出了一个名为UPS的PWS框架,它可以通过查询自适应地泛化配置文件,同时尊重用户指定的隐私要求。我们的运行时泛化旨在在评估个性化效用和暴露泛化配置文件的隐私风险的两个预测指标之间取得平衡。提出了两种贪心算法GreedyDP和GreedyIL,用于运行时泛化。我们还提供了一个在线预测机制来决定个性化查询是否有益。大量的实验证明了我们的框架的有效性。实验结果还表明,GreedyIL在效率方面明显优于GreedyDP。索引术语:隐私保护、个性化网络搜索、实用程序、风险、概况
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Designing Improvisation in Privacy Protection for Personalized Web Search using deep learning approach
Abstract—Personalized web search (PWS) has demonstrated its effectiveness in improving the quality of various search services on the Internet. However, evidences show that users’ reluctance to disclose their private information during search has become a major barrier for the wide proliferation of PWS. We study privacy protection in PWS applications that model user preferences as hierarchical user profiles. We propose a PWS framework called UPS that can adaptively generalize profiles by queries while respecting user- specified privacy requirements. Our runtime generalization aims at striking a balance between two predictive metrics that evaluate the utility of personalization and the privacy risk of exposing the generalized profile. We present two greedy algorithms, namely GreedyDP and GreedyIL, for runtime generalization. We also provide an online prediction mechanism for deciding whether personalizing a query is beneficial. Extensive experiments demonstrate the effectiveness of our framework. The experimental results also reveal that GreedyIL significantly outperforms GreedyDP in terms of efficiency.   Index Terms—Privacy protection, personalized web search, utility, risk, profile
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