Time varying undirected graphs

作者:Shuheng Zhou, John Lafferty, Larry Wasserman

摘要

Undirected graphs are often used to describe high dimensional distributions. Under sparsity conditions, the graph can be estimated using ℓ 1 penalization methods. However, current methods assume that the data are independent and identically distributed. If the distribution, and hence the graph, evolves over time then the data are not longer identically distributed. In this paper we develop a nonparametric method for estimating time varying graphical structure for multivariate Gaussian distributions using an ℓ 1 regularization method, and show that, as long as the covariances change smoothly over time, we can estimate the covariance matrix well (in predictive risk) even when p is large.

论文关键词:Graph selection, ℓ 1 regularization, High dimensional asymptotics, Risk consistency

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论文官网地址:https://doi.org/10.1007/s10994-010-5180-0