Correlation sketching for ordered data

Juan P. Hoyos, R. Carrillo, Sebastian Pazos, Pablo E. Jojoa
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引用次数: 1

Abstract

Methods based on order statistics are often used in finance, quality control, data and signal processing, especially when signals of interest are immersed in impulsive noise. These allow to include rank information by increasing the dimension of the problem. In large dimension problems, we are usually required to know only the second order statistics. In this article we use a rank-one quadratic measurement model based on sketches to estimate the correlation matrix for ordered data. Furthermore, we exploit this matrix's structure to design a convex relaxation optimization problem to recover the matrix. This reconstruction takes a number of measurements proportional to the original size of the problem (without ordering). We provide simulations to show the reconstruction performance of the proposed scheme, and the robustness of this estimation when uniform noise is present.
有序数据的关联草图
基于顺序统计的方法常用于金融、质量控制、数据和信号处理,特别是当感兴趣的信号被淹没在脉冲噪声中时。这允许通过增加问题的维度来包含排名信息。在大维度问题中,我们通常只需要知道二阶统计量。在本文中,我们使用基于草图的一阶二次测量模型来估计有序数据的相关矩阵。进一步,利用该矩阵的结构设计了一个凸松弛优化问题来恢复矩阵。这种重建需要许多与问题的原始大小成比例的测量(没有排序)。我们提供了仿真来显示所提出的方案的重建性能,以及当均匀噪声存在时该估计的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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