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A Bayesian network model of knowledge-based authentication.

机译:基于知识的身份验证的贝叶斯网络模型。

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摘要

Knowledge-based authentication (KBA) has gained prominence as a user authentication method for electronic commerce. Our research of the KBA problem, which adopts a statistical modeling approach, consists of three parts---model selection, feature selection, and empirical investigation.; First, we present a non-parameterc Bayesian network model of KBA, which is grounded in probabilistic reasoning and information theory. The probabilistic semantics of the model parameters naturally lead to the definitions of two key KBA metrics-guessability and memorability. The statistical modeling approach allows parameter estimation using rigorous methods such as maximum likelihood and maximum a posteriori estimation. The information-theoretic view helps to derive the closed-form solutions to estimating the guessability and guessing entropy metrics. These results with respect to the KBA metrics and the models under different attacking strategies and factoid distributions are unified under a game-theoretic framework that further yields lower and upper bounds of the optimal guessability.; Second, we propose an approach to feature selection in KBA that is based on the principle of maximum entropy with proper underlying probabilistic semantics in the information security domain. If we represent a KBA domain as a generative probabilistic model, the knowledge about genuine users defines an empirical distribution of a factoid vector, whereas the attacking strategy exploited by an impostor can be formulated as another distribution that approximates the true distribution. Thus the objective of feature selection is to maximize the Kullback-Leibler divergence between the true and approximating distributions. The closed-form solutions to this optimization problem at different, granularity levels lead to three feature selection algorithms, characterized by increasing adaptivity.; Third, an empirical investigation extends the analytical modeling to the behavioral and social space of KBA, which is comprised of a pilot study and a large-scale experiment with online social networking data. The pilot study validated that the proposed Bayesian model makes a sensible approximation to the human cognitive process. Our experiments with online social networking data show that, with the cutting-edge statistical machine learning techniques and the abundant data available from the Internet; the guessability can be significantly improved.
机译:基于知识的身份验证(KBA)作为电子商务中的用户身份验证方法而倍受关注。我们对KBA问题的研究采用统计建模方法,包括模型选择,特征选择和实证研究三个部分。首先,我们提出了KBA的非参数贝叶斯网络模型,该模型基于概率推理和信息论。模型参数的概率语义自然导致了两个关键KBA指标的定义:可猜测性和可记忆性。统计建模方法允许使用严格的方法(例如最大似然和最大后验估计)进行参数估计。信息理论视图有助于导出封闭形式的解决方案,以估计可猜测性和猜测熵度量。在不同的攻击策略和事实分布下,关于KBA度量和模型的这些结果在一个博弈论框架下是统一的,进一步产生了最佳可猜测性的上下限。其次,我们提出了一种在信息安全领域中基于最大熵原理和适当的潜在概率语义的KBA特征选择方法。如果我们将KBA域表示为一个生成概率模型,则关于真实用户的知识将定义事实类载体的经验分布,而冒名顶替者所利用的攻击策略可以表述为近似真实分布的另一个分布。因此,特征选择的目的是使真实分布和近似分布之间的Kullback-Leibler散度最大化。在不同的粒度级别上针对该优化问题的闭式解决方案导致了三种特征选择算法,其特征在于适应性的提高。第三,实证研究将分析模型扩展到KBA的行为和社交空间,其中包括试点研究和使用在线社交网络数据的大规模实验。初步研究证实,提出的贝叶斯模型对人的认知过程做出了合理的近似。我们对在线社交网络数据的实验表明,借助先进的统计机器学习技术和可从Internet获得的大量数据;可猜测性可以大大提高。

著录项

  • 作者

    Chen, Ye.;

  • 作者单位

    The University of Wisconsin - Madison.;

  • 授予单位 The University of Wisconsin - Madison.;
  • 学科 Business Administration Management.; Computer Science.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 149 p.
  • 总页数 149
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 贸易经济;自动化技术、计算机技术;
  • 关键词

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