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首页> 外文期刊>IEEE Transactions on Signal Processing >Online Topology Identification From Vector Autoregressive Time Series
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Online Topology Identification From Vector Autoregressive Time Series

机译:矢量自动评级时间序列的在线拓扑识别

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摘要

Causality graphs are routinely estimated in social sciences, natural sciences, and engineering due to their capacity to efficiently represent the spatiotemporal structure of multi-variate data sets in a format amenable for human interpretation, forecasting, and anomaly detection. A popular approach to mathematically formalize causality is based on vector autoregressive (VAR) models and constitutes an alternative to the well-known, yet usually intractable, Granger causality. Relying on such a VAR causality notion, this paper develops two algorithms with complementary benefits to track time-varying causality graphs in an online fashion. Their constant complexity per update also renders these algorithms appealing for big-data scenarios. Despite using data sequentially, both algorithms are shown to asymptotically attain the same average performance as a batch estimator which uses the entire data set at once. To this end, sublinear (static) regret bounds are established. Performance is also characterized in time-varying setups by means of dynamic regret analysis. Numerical results with real and synthetic data further support the merits of the proposed algorithms in static and dynamic scenarios.
机译:由于其能力以适用于人类解释,预测和异常检测的格式,因此在社会科学,自然科学和工程中经常估计了因果图,自然科学和工程。一种流行的数学上正式化因果关系的方法是基于矢量自动增加(var)模型,并构成了众所周知,通常是棘手的格兰杰因果关系的替代方案。依靠这种var因果关系概念,本文开发了两个具有互补益处的算法,以便以在线方式跟踪时变因果图。每个更新的持续复杂性也使这些算法吸引了大数据场景。尽管顺序使用数据,但两种算法都显示为渐近地实现与使用一次使用整个数据集的批量估计的平均性能相同。为此,建立了Sublinear(静态)后悔界限。性能还表征了通过动态遗憾分析的时变的设置。具有实际和合成数据的数值结果进一步支持静态和动态方案中所提出的算法的优点。

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