基于马尔可夫链和随机漫步的私有外包数据分析应用

Ping-Min Lin, K. Candan
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引用次数: 6

摘要

基于随机漫步图和马尔可夫链的模型被广泛应用于许多数据和系统分析领域,包括网络、生物信息学和排队。这些模型使描述和分析随机系统的各种行为成为可能。如果被建模的系统具有某些性质,例如不可约和非周期,则可以使用与其平稳行为相对应的封闭形式公式来分析其行为。然而,如果系统不具有这些属性,或者用户对平稳行为不感兴趣,则需要使用迭代方法来根据模型的初始概率分布输入来确定潜在的结果。在本文中,我们专注于基于访问隐私的外包马尔可夫链数据分析应用程序,其中不受信任的服务提供商接受(隐藏的)用户查询,这些查询以初始状态分布描述,并以遗忘的方式迭代地评估它们。我们表明,如果服务器具有关于底层马尔可夫过程的先验知识,则该迭代过程可以泄漏有关隐藏输入的可能值的信息。因此,与简单的混淆机制相反,我们开发了一种基于有条理地添加额外状态的算法,该算法保证了输入的无界可行区域,从而防止恶意主机对输入进行知情猜测。
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Access-Private Outsourcing of Markov Chain and RandomWalk based Data Analysis Applications
Random walk graph and Markov chain based models are used heavily in many data and system analysis domains, including web, bioinformatics, and queueing. These models enable the description and analysis of various behaviors of stochastic systems. If the system being modelled has certain properties, such as if it is irreducible and aperiodic, close form formulations corresponding to its stationary behavior can be used to analyze its behavior. However, if the system does not have these properties or if the user is not interested in the stationary behavior, then an iterative approach needs to be used to determine potential outcomes based on the initial probability distribution inputs to the model. In this paper, we focus on access-privacy enabled outsourced Markov chain based data analysis applications, where a non-trusted service provider takes (hidden) user queries that are described in terms of initial state distributions, and evaluates them iteratively in an oblivious manner. We show that this iterative process can leak information regarding the possible values of the hidden input if the server has a priori knowledge about the underlying Markovian process. Hence as opposed to simple obfuscation mechanisms, we develop an algorithm based on methodical addition of extra states, which guarantees unbounded feasible regions for the inputs, thus preventing a malicious host from having an informed guess regarding the inputs.
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