Literature DB >> 33828398

Estimating Time-Varying Graphical Models.

Jilei Yang1, Jie Peng1.   

Abstract

In this paper, we study time-varying graphical models based on data measured over a temporal grid. Such models are motivated by the needs to describe and understand evolving interacting relationships among a set of random variables in many real applications, for instance the study of how stock prices interact with each other and how such interactions change over time. We propose a new model, LOcal Group Graphical Lasso Estimation (loggle), under the assumption that the graph topology changes gradually over time. Specifically, loggle uses a novel local group-lasso type penalty to efficiently incorporate information from neighboring time points and to impose structural smoothness of the graphs. We implement an ADMM based algorithm to fit the loggle model. This algorithm utilizes blockwise fast computation and pseudo-likelihood approximation to improve computational efficiency. An R package loggle has also been developed and is available on https://cran.r-project.org/. We evaluate the performance of loggle by simulation experiments. We also apply loggle to S&P 500 stock price data and demonstrate that loggle is able to reveal the interacting relationships among stock prices and among industrial sectors in a time period that covers the recent global financial crisis. The supplemental materials for this paper are also available online.

Entities:  

Keywords:  ADMM algorithm; Gaussian graphical model; S&P 500; group-lasso; pseudo-likelihood approximation

Year:  2019        PMID: 33828398      PMCID: PMC8023339          DOI: 10.1080/10618600.2019.1647848

Source DB:  PubMed          Journal:  J Comput Graph Stat        ISSN: 1061-8600            Impact factor:   2.302


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