论文标题

带有不可靠数据的径向动力学系统中的拓扑学习

Topology Learning in Radial Dynamical Systems with Unreliable Data

论文作者

Subramanian, Venkat Ram, Deka, Deepjyoti, Talukdar, Saurav, Lamperski, Andy, Salapaka, Murti

论文摘要

许多复杂的工程系统都接受了代理之间的双向和线性耦合。从数据中识别这种影响途径/耦合的盲目和被动方法对于许多应用是至关重要的。但是,源自不同来源的动态相关的数据流很容易受到不同流,数据包滴和噪声的异步时间戳记引起的损坏。这种不完美的信息可能存在于整个观察期,因此未通过需要初始清洁观察期的变更检测算法检测到。先前的工作表明,由于损坏的数据流,在图形结构中推断出虚假链接,从而阻止了一致的学习。在本文中,我们提供了一种新颖的方法来检测腐败代理的位置,并提出了一种算法,尽管数据流损坏,但仍可以学习径向动力学系统的结构。特别是,我们表明,如果未知损坏的节点彼此至少有三个啤酒花,我们的方法可以学会学习真正的径向结构。我们的理论结果在测试动态网络中得到了进一步验证。

Many complex engineering systems admit bidirectional and linear couplings between their agents. Blind and passive methods to identify such influence pathways/couplings from data are central to many applications. However, dynamically related data-streams originating at different sources are prone to corruption caused by asynchronous time-stamps of different streams, packet drops and noise. Such imperfect information may be present in the entire observation period, and hence not detected by change-detection algorithms that require an initial clean observation period. Prior work has shown that spurious links are inferred in the graph structure due to the corrupted data-streams, which prevents consistent learning. In this article, we provide a novel approach to detect the location of corrupt agents as well as present an algorithm to learn the structure of radial dynamical systems despite corrupted data streams. In particular, we show that our approach provably learns the true radial structure if the unknown corrupted nodes are at least three hops away from each other. Our theoretical results are further validated in test dynamical network.

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