Literature DB >> 31839683

Learning High-dimensional Generalized Linear Autoregressive Models.

Eric C Hall1, Garvesh Raskutti2, Rebecca M Willett3.   

Abstract

Vector autoregressive models characterize a variety of time series in which linear combinations of current and past observations can be used to accurately predict future observations. For instance, each element of an observation vector could correspond to a different node in a network, and the parameters of an autoregressive model would correspond to the impact of the network structure on the time series evolution. Often these models are used successfully in practice to learn the structure of social, epidemiological, financial, or biological neural networks. However, little is known about statistical guarantees on estimates of such models in non-Gaussian settings. This paper addresses the inference of the autoregressive parameters and associated network structure within a generalized linear model framework that includes Poisson and Bernoulli autoregressive processes. At the heart of this analysis is a sparsity-regularized maximum likelihood estimator. While sparsity-regularization is well-studied in the statistics and machine learning communities, those analysis methods cannot be applied to autoregressive generalized linear models because of the correlations and potential heteroscedasticity inherent in the observations. Sample complexity bounds are derived using a combination of martingale concentration inequalities and modern empirical process techniques for dependent random variables. These bounds, which are supported by several simulation studies, characterize the impact of various network parameters on estimator performance.

Entities:  

Keywords:  Autoregressive processes; Generalized linear models; Statistical learning; Structured learning

Year:  2018        PMID: 31839683      PMCID: PMC6910659          DOI: 10.1109/TIT.2018.2884673

Source DB:  PubMed          Journal:  IEEE Trans Inf Theory        ISSN: 0018-9448            Impact factor:   2.501


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1.  Emergence of scaling in random networks

Authors: 
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2.  Small world effect in an epidemiological model.

Authors:  M Kuperman; G Abramson
Journal:  Phys Rev Lett       Date:  2001-03-26       Impact factor: 9.161

3.  Estimating a state-space model from point process observations.

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5.  Analyzing coherent brain networks with Granger causality.

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6.  Hypergraph-based anomaly detection of high-dimensional co-occurrences.

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7.  Speed limitation and motorway casualties: a time series count data regression approach.

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Journal:  Accid Anal Prev       Date:  1996-01

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