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An efficient and privacy-preserving framework for information dissemination among independent entities.

机译:一个在独立实体之间传播信息的有效且可保护隐私的框架。

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摘要

Information dissemination is the very reason for the existence of the Internet. Within the community of independent entities that make up the Internet, the quality of openness that has contributed to scalability and connectivity has also introduced numerous security and privacy challenges. This is particularly the case when sensitive information is distributed among entities that do not have pre-existing trust relationships.; In this thesis, we concentrate on several important problems that arise in constructing a framework for information transmission within an open environment while providing privacy. We first consider the procedure of establishing mutual trust by exchanging digital credentials, a process referred to as trust negotiation. Different from other existing work that focuses on how to establish trust safely and completely, we investigate the problem of minimizing the amount of credential information that is exchanged during a trust-negotiation process. We prove the NP-hardness of this minimization problem, and propose and evaluate efficient heuristic algorithms that are still safe and complete.; We next investigate how to distribute information with a minimum cost among entities that have established trust relationships. Specifically, we study this minimization problem in a so-called publish/subscribe system. Publish/subscribe (pub/sub) is an emerging paradigm for information dissemination in which information published by publishers and interests submitted by subscribers are sent to the pub/sub system. The pub/sub system then matches events and interests and delivers to each user those events that satisfy that user's declared interests. We consider cases where information dissemination is restricted by policy constraints (e.g., due to security or confidentiality concerns), and where information can be combined at so-called brokers in the network, a process known as composition. Unsurprisingly, the minimization problem is shown to be NP-complete. We then propose and compare different approximation approaches, showing that the proposed heuristics found good solutions over a range of problem configurations, especially in a policy-constrained system.; We then examine the problem of protecting private information in a stream processing system. We propose a Mulit-Set Attribute (MSA) model to address the need for formal evaluation and verification of the privacy and policy constraints that must be met by the system. The MSA model is designed to provide privacy protection to personally identifiable information under real time requirements and in the presence of untrustworthy processing elements. Under a MSA model, data requests not compliant with privacy policy constraints are denied. This binary-decision (i.e., either allowance or denial) model can be too rigid in practice and fail to balance data privacy and utility. To quantify the trade-off between privacy and utility, we propose a privacy model based on identifiability risk computation that estimates the risk of data access, and allows those requesting data access to decide whether the risk is justified. We present the definition and calculation of the identifiability risk. We further illustrate our approach using data published by the U. S. Census Bureau.
机译:信息传播是互联网存在的根本原因。在组成Internet的独立实体社区中,促成可伸缩性和连接性的开放质量也带来了许多安全和隐私挑战。当敏感信息分布在不具有预先存在的信任关系的实体之间时,尤其如此。在这篇论文中,我们集中于在提供开放性的同时提供隐私的同时构建信息传输框架中出现的几个重要问题。我们首先考虑通过交换数字证书建立相互信任的过程,该过程称为信任协商。与专注于如何安全和完全建立信任的其他现有工作不同,我们研究了使信任协商过程中交换的凭据信息量最小化的问题。我们证明了该最小化问题的NP难点,并提出并评估了仍然安全且完整的有效启发式算法。接下来,我们研究如何在建立信任关系的实体之间以最小的成本分配信息。具体来说,我们在所谓的发布/订阅系统中研究此最小化问题。发布/订阅(pub / sub)是一种新兴的信息传播范例,其中发布者发布的信息和订阅者提交的兴趣被发送到发布/订阅系统。然后,发布/订阅系统将事件和兴趣匹配,并将满足该用户声明的兴趣的事件传递给每个用户。我们考虑以下情况:信息传播受到政策约束的限制(例如,出于安全性或机密性考虑),并且可以在网络中的所谓代理处合并信息,这种过程称为“组合”。毫不奇怪,最小化问题显示为NP完全的。然后,我们提出并比较了不同的近似方法,表明所提出的启发式方法可以在一系列问题配置中找到良好的解决方案,尤其是在策略受限的系统中。然后,我们研究在流处理系统中保护私有信息的问题。我们提出了多属性集(MSA)模型,以解决对系统必须满足的对隐私和策略约束进行正式评估和验证的需求。 MSA模型旨在在实时要求下并且在存在不可信任的处理元素的情况下为个人身份信息提供隐私保护。在MSA模型下,不符合隐私策略约束的数据请求将被拒绝。在实践中,这种二元决策(即允许或拒绝)模型可能过于僵化,无法平衡数据隐私和实用性。为了量化隐私和实用程序之间的权衡,我们提出了一种基于可识别性风险计算的隐私模型,该模型可估算数据访问的风险,并允许那些请求数据访问的人确定该风险是否合理。我们提出了可识别性风险的定义和计算。我们将使用美国人口普查局发布的数据进一步说明我们的方法。

著录项

  • 作者

    Chen, Weifeng.;

  • 作者单位

    University of Massachusetts Amherst.;

  • 授予单位 University of Massachusetts Amherst.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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