利用身份属性生态系统预测和解释身份风险、暴露和成本

Razieh Nokhbeh Zaeem, S. Budalakoti, K. Suzanne Barber, Muhibur Rasheed, C. Bajaj
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引用次数: 27

摘要

个人身份信息(PII)通常用于物理和网络世界中执行个人身份验证。美国司法部(Department of Justice) 2014年的一份报告估计,大约7%的美国家庭在前一年报告了某种形式的身份盗窃,包括盗窃和欺诈性使用此类个人身份信息。建立PII属性及其关系的全面映射是保护用户免遭身份盗用的基本第一步。在本文中,我们提出了一个名为身份生态系统的个人可识别信息属性模型的数学表示和实现。每个PII属性(例如,姓名、年龄和社会安全号码)都被建模为一个图节点。PII属性之间的概率关系被建模为图边。我们将这个身份生态系统模型实现为贝叶斯信念网络(允许循环),并使用Gibb抽样来近似模型中的后验。我们从两个信息来源填充模型:1)实际的盗窃和欺诈案件;2)专家的估计。我们已经利用我们的身份生态系统实现来预测和解释丢失PII的风险以及与欺诈性使用这些PII属性相关的责任。为了更好地理解复杂的身份生态系统,我们还提供了身份生态系统模型的3D可视化和在模型上执行的查询。本研究旨在促进对个人身份信息属性的基本理解,并为防止身份盗窃和欺诈提供更好的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting and explaining identity risk, exposure and cost using the ecosystem of identity attributes
Personally Identifiable Information (PII) is commonly used in both the physical and cyber worlds to perform personal authentication. A 2014 Department of Justice report estimated that roughly 7% of American households reported some type of identity theft in the previous year, involving the theft and fraudulent use of such PII. Establishing a comprehensive map of PII attributes and their relationships is a fundamental first step to protect users from identity theft. In this paper, we present the mathematical representation and implementation of a model of Personally Identifiable Information attributes for people, named Identity Ecosystem. Each PII attribute (e.g., name, age, and Social Security Number) is modeled as a graph node. Probabilistic relationships between PII attributes are modeled as graph edges. We have implemented this Identity Ecosystem model as a Bayesian Belief Network (with cycles allowed) and we use Gibb's Sampling to approximate the posteriors in our model. We populated the model from two sources of information: 1) actual theft and fraud cases; and 2) experts' estimates. We have utilized our Identity Ecosystem implementation to predict as well as to explain the risk of losing PII and the liability associated with fraudulent use of these PII attributes. For better human understanding of the complex identity ecosystem, we also provide a 3D visualization of the Identity Ecosystem model and queries executed on the model. This research aims to advance a fundamental understanding of PII attributes and leads to better methods for preventing identity theft and fraud.
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