On the identifiability of multi-observer hidden Markov models

H. Nguyen, M. Roughan
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引用次数: 4

Abstract

Most large attacks on the Internet are distributed. As a result, such attacks are only partially observed by any one Internet service provider (ISP). Detection would be significantly easier with pooled observations, but privacy concerns often limit the information that providers are willing to share. Multi-party secure distributed computation provides a means for combining observations without compromising privacy. In this paper, we show the benefits of this approach, the most notable of which is that combinations of observations solve identifiability problems in existing approaches for detecting network attacks.
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多观测器隐马尔可夫模型的可辨识性
互联网上的大多数大型攻击都是分布式的。因此,此类攻击只能被任何一个互联网服务提供商(ISP)部分观察到。如果将观察结果集合起来,检测起来会容易得多,但隐私问题往往会限制提供者愿意分享的信息。多方安全分布式计算提供了一种在不损害隐私的情况下组合观察结果的方法。在本文中,我们展示了这种方法的好处,其中最值得注意的是,观察组合解决了现有方法中用于检测网络攻击的可识别性问题。
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