Advances in Spatial Integer-Valued Time Series Modeling
Abstract Number:
1954
Submission Type:
Contributed Abstract
Contributed Abstract Type:
Speed
Participants:
Cathy Woan-Shu Chen (1), Chun-Shu Chen (2), Hsiao-Hsuan Liao (3)
Institutions:
(1) Feng Chia University, N/A, (2) National Central University, N/A, (3) Department of Statistics, Feng Chia University, Taichung, Taiwan
Co-Author(s):
Speaker:
Abstract Text:
This study develops an empirical Bayes (EB) spatial hurdle INGARCH model for weekly dengue fever counts and compares it with a spatial zero-inflated generalized Poisson (ZIGP) INGARCH framework, both capturing spatio-temporal dependence and excess zeros. The EB-hurdle model introduces a data-adaptive prior that reduces model complexity and enhances parsimony and stability while retaining flexibility for dynamic zero inflation. In spatial INGARCH models, the zero-generating mechanism depends on lagged outcomes, implying that covariate effects influence the intensity equation indirectly. To enhance epidemiological relevance, seasonal patterns are incorporated into the log-intensity equations using Fourier-based harmonic terms and meteorological covariates. Model inference is conducted within a Bayesian framework. The results highlight the distinct roles of seasonal and environmental drivers in dengue transmission and demonstrate that Fourier-based periodic components provide an effective alternative when meteorological data are limited or unavailable. Overall, the empirical Bayes approach offers a parsimonious and stable improvement over conventional hurdle INGARCH models.
Keywords:
Bayesian inference|Dengue fever|Fourier series| INGARCH models|Spatio-temporal modeling| Zero-inflated count data
Sponsors:
International Society for Bayesian Analysis (ISBA)
Tracks:
Miscellaneous
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