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Estimating Dynamic Graphical Models from Multivariate Time-Series Data: Recent Methods and Results

机译:从多元时间序列数据估计动态图形模型:最新方法和结果

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Dynamic graphical models aim to describe the time-varying dependency structure of multiple time-series. In this article we review research focusing on the formulation and estimation of such models. The bulk of work in graphical structurelearning problems has focused in the stationary i.i.d setting, we present a brief overview of this work before introducing some dynamic extensions. In particular we focuson two classes of dynamic graphical model; continuous (smooth) models which are estimated via localised kernels, and piecewise models utilising regularisation based estimation. We give an overview of theoretical and empirical results regarding these models, before demonstrating their qualitative difference in the context of a real-world financial time-series dataset. We conclude with a discussion of the state of the field and future research directions.
机译:动态图形模型旨在描述多个时间序列的时变依赖关系结构。在本文中,我们回顾了侧重于此类模型的制定和估计的研究。图形结构学习问题中的大部分工作都集中在固定的i.i.d设置上,在介绍一些动态扩展之前,我们将对此工作进行简要概述。特别地,我们集中于两类动态图形模型。通过局部核估计的连续(平滑)模型,以及使用基于正则化的估计的分段模型。在展示它们在实际金融时间序列数据集中的质性差异之前,我们对有关这些模型的理论和经验结果进行了概述。最后,我们讨论了该领域的现状和未来的研究方向。

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