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An algorithm for arbitrary–order cumulant tensor calculation in a sliding window of data streams

机译:一种数据流滑动窗口任意汇集卷重计算的算法

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High-order cumulant tensors carry information about statistics of non-normally distributed multivariate data. In this work we present a new efficient algorithm for calculation of cumulants of arbitrary orders in a sliding window for data streams. We show that this algorithm offers substantial speedups of cumulant updates compared with the current solutions. The proposed algorithm can be used for processing on-line high-frequency multivariate data and can find applications, e.g., in on-line signal filtering and classification of data streams. To present an application of this algorithm, we propose an estimator of non-Gaussianity of a data stream based on the norms of high order cumulant tensors. We show how to detect the transition from Gaussian distributed data to non-Gaussian ones in a data stream. In order to achieve high implementation efficiency of operations on super-symmetric tensors, such as cumulant tensors, we employ a block structure to store and calculate only one hyper-pyramid part of such tensors.
机译:高阶累积卷重统计有关非正常分布式多变量数据的统计信息的信息。在这项工作中,我们提出了一种新的高效算法,用于计算用于数据流的滑动窗口中任意订单的累积量。我们表明,与当前解决方案相比,该算法提供了大量的累积更新的速度。所提出的算法可用于处理在线高频多变量数据,并且可以找到应用程序,例如,在线信号过滤和数据流的分类。为了呈现该算法的应用,我们提出了一种基于高阶累积张量的规范的数据流的非高斯度的估计。我们展示了如何在数据流中检测从高斯分布式数据到非高斯分布式的转换。为了实现高度对称张量的操作的高实现效率,例如累积卷曲器,我们采用块结构来存储和计算这种张量的一个超金字塔部分。

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