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Bibliographic Details
Main Authors: Malabanan, Vladimir A., Lansangan, Joseph Ryan G., Barrios, Erniel B.
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2105.01322
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author Malabanan, Vladimir A.
Lansangan, Joseph Ryan G.
Barrios, Erniel B.
author_facet Malabanan, Vladimir A.
Lansangan, Joseph Ryan G.
Barrios, Erniel B.
contents In modelling time series data coming from different sources, frequencies can easily vary since some variable can be measured at higher frequencies, others, at lower frequencies. Given data measured over spatial units and at varying frequencies, we postulated a semiparametric spatiotemporal model. This optimizes utilization of information from variables measured at higher frequency by estimating its nonparametric effect on the response through the backfitting algorithm in and additive modelling framework. Simulation studies support the optimality of the model over simple generalized additive model with aggregation of high frequency predictors to match the dependent variable measured at lower frequency. With quarterly corn production and the dependent variable, the model is fitted with predictors coming from remotely-sensed data (vegetation and precipitation indices), predictive ability is better compared to two benchmark generalized additive models.
format Preprint
id arxiv_https___arxiv_org_abs_2105_01322
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Semiparametric Spatiotemporal Model with Mixed Frequencies
Malabanan, Vladimir A.
Lansangan, Joseph Ryan G.
Barrios, Erniel B.
Methodology
62G08 37M05 37M10 68W01
In modelling time series data coming from different sources, frequencies can easily vary since some variable can be measured at higher frequencies, others, at lower frequencies. Given data measured over spatial units and at varying frequencies, we postulated a semiparametric spatiotemporal model. This optimizes utilization of information from variables measured at higher frequency by estimating its nonparametric effect on the response through the backfitting algorithm in and additive modelling framework. Simulation studies support the optimality of the model over simple generalized additive model with aggregation of high frequency predictors to match the dependent variable measured at lower frequency. With quarterly corn production and the dependent variable, the model is fitted with predictors coming from remotely-sensed data (vegetation and precipitation indices), predictive ability is better compared to two benchmark generalized additive models.
title Semiparametric Spatiotemporal Model with Mixed Frequencies
topic Methodology
62G08 37M05 37M10 68W01
url https://arxiv.org/abs/2105.01322