Dynamic Chain Graph Models for Ordinal Time Series Data
Abstract
This paper introduces sparse dynamic chain graph models for network inference in high dimensional non-Gaussian time series data. The proposed method parametrized by a precision matrix that encodes the intra time-slice conditional independence among variables at a fixed time point, and an autoregressive coefficient that contains dynamic conditional independences interactions among time series components across consecutive time steps. The proposed model is a Gaussian copula vector autoregressive model, which is used to model sparse interactions in a high-dimensional setting. Estimation is achieved via a penalized EM algorithm. In this paper, we use an efficient coordinate descent algorithm to optimize the penalized log-likelihood with the smoothly clipped absolute deviation penalty. We demonstrate our approach on simulated and genomic datasets. The method is implemented in an R package tsnetwork.
Cite
@article{arxiv.1805.09840,
title = {Dynamic Chain Graph Models for Ordinal Time Series Data},
author = {Pariya Behrouzi and Fentaw Abegaz and Ernst C. Wit},
journal= {arXiv preprint arXiv:1805.09840},
year = {2018}
}
Comments
19 pages, 2 tables, 1 figure