Sparse Generalized Yule-Walker Estimation for Large Spatio-temporal
Autoregressions with an Application to NO2 Satellite Data
- URL: http://arxiv.org/abs/2108.02864v1
- Date: Thu, 5 Aug 2021 21:51:45 GMT
- Title: Sparse Generalized Yule-Walker Estimation for Large Spatio-temporal
Autoregressions with an Application to NO2 Satellite Data
- Authors: Hanno Reuvers and Etienne Wijler
- Abstract summary: We consider sparse estimation of a class of high-dimensional models.
We estimate the relationships governing both the spatial and temporal dependence in a fully-driven way by penalizing a set of Yule-Walker equations.
A satellite simulation exercise shows strong finite sample performance compared to competing procedures.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We consider sparse estimation of a class of high-dimensional spatio-temporal
models. Unlike classical spatial autoregressive models, we do not rely on a
predetermined spatial interaction matrix. Instead, under the assumption of
sparsity, we estimate the relationships governing both the spatial and temporal
dependence in a fully data-driven way by penalizing a set of Yule-Walker
equations. While this regularization can be left unstructured, we also propose
a customized form of shrinkage to further exploit diagonally structured forms
of sparsity that follow intuitively when observations originate from spatial
grids such as satellite images. We derive finite sample error bounds for this
estimator, as well estimation consistency in an asymptotic framework wherein
the sample size and the number of spatial units diverge jointly. A simulation
exercise shows strong finite sample performance compared to competing
procedures. As an empirical application, we model satellite measured NO2
concentrations in London. Our approach delivers forecast improvements over a
competitive benchmark and we discover evidence for strong spatial interactions
between sub-regions.
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