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Variable selection in sparse GLARMA models
TL;DR: This approach consists in iteratively combining the estimation of the autoregressive moving average (ARMA) coefficients of GLARMA models with regularized methods designed for performing variable selection in regression coefficients of Generalized Linear Models (GLM).
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Abstract: In this paper, we propose a novel and efficient two-stage variable selection approach for sparse GLARMA models, which are pervasive for modeling discrete-valued time series. Our approach consists in iteratively combining the estimation of the autoregressive moving average (ARMA) coefficients of GLARMA models with regularized methods designed for performing variable selection in regression coefficients of Generalized Linear Models (GLM). We first establish the consistency of the ARMA part coefficient estimators in a specific case. Then, we explain how to efficiently implement our approach. Finally, we assess the performance of our methodology using synthetic data and compare it with alternative methods. Our approach is very attractive since it benefits from a low computational load and is able to outperform the other methods in terms of coefficient estimation, particularly in recovering the non null regression coefficients.
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Citations
Variable selection in sparse multivariate GLARMA models: Application to germination control by environment
31 Aug 2022
TL;DR: In this article , an iterative two-stage variable selection approach is proposed for multivariate sparse GLARMA models, which can be used for modelling multivariate discrete-valued time series.
Variable selection in sparse multivariate GLARMA models: Application to germination control by environment
Marina Gomtsyan,C. L'evy-Leduc,S. Ouadah,Laure Sansonnet,Christophe Bailly,Loïc Rajjou +5 more
- 31 Aug 2022
TL;DR: This work proposes a novel and eficient iterative two-stage variable selection approach for multivariate sparse GLARMA models, which can be used for modelling multivariate discrete-valued time series and is able to outperform the other methods for recovering the null and non-null coefficients.
Conditional parametric bootstrap in GLARMA models
Gisele de Oliveira Maia,Glaura da Conceição Franco +1 more
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Asymptotic theory of statistical inference for time series
TL;DR: In this article, the authors present a model for estimating and testing Stochastic Processes based on local asymptotic normality, which is used for estimating long-term memory (LM) processes.
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