On Conditional Independence Graph Learning From Multi-Attribute Gaussian Dependent Time Series

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Jitendra K. Tugnait
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引用次数: 0

Abstract

Estimation of the conditional independence graph (CIG) of high-dimensional multivariate Gaussian time series from multi-attribute data is considered. Existing methods for graph estimation for such data are based on single-attribute models where one associates a scalar time series with each node. In multi-attribute graphical models, each node represents a random vector or vector time series. In this paper we provide a unified theoretical analysis of multi-attribute graph learning for dependent time series using a penalized log-likelihood objective function formulated in the frequency domain using the discrete Fourier transform of the time-domain data. We consider both convex (sparse-group lasso) and non-convex (log-sum and SCAD group penalties) penalty/regularization functions. We establish sufficient conditions in a high-dimensional setting for consistency (convergence of the inverse power spectral density to true value in the Frobenius norm), local convexity when using non-convex penalties, and graph recovery. We do not impose any incoherence or irrepresentability condition for our convergence results. We also empirically investigate selection of the tuning parameters based on the Bayesian information criterion, and illustrate our approach using numerical examples utilizing both synthetic and real data.
多属性高斯相关时间序列的条件独立图学习
研究了基于多属性数据的高维多元高斯时间序列的条件独立图估计问题。现有的图估计方法基于单属性模型,其中每个节点关联一个标量时间序列。在多属性图形模型中,每个节点表示一个随机向量或向量时间序列。在本文中,我们提供了一个统一的理论分析的多属性图学习的依赖时间序列使用惩罚对数似然目标函数在频域利用离散傅里叶变换的时域数据。我们同时考虑凸(稀疏群套索)和非凸(对数和和SCAD群惩罚)惩罚/正则化函数。我们在高维环境中建立了一致性(逆功率谱密度在Frobenius范数中收敛到真值)、使用非凸惩罚时的局部凸性和图恢复的充分条件。我们没有对我们的收敛结果施加任何非相干性或不可表示性条件。我们还对基于贝叶斯信息准则的调优参数的选择进行了实证研究,并利用合成数据和实际数据用数值例子说明了我们的方法。
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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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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