PREDICTING COVID-19 HOSPITALISATION USING A MIXTURE OF BAYESIAN PREDICTIVE SYNTHESES
成果类型:
Article
署名作者:
Kobayashi, Genya; Sugasawa, Shonosuke; Kawakubo, Yuki; Han, Dongu; Choi, Taeryon
署名单位:
Meiji University; Keio University; Chiba University; Korea University
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/24-AOAS1941
发表日期:
2024
页码:
3383-3404
关键词:
models
摘要:
This paper proposes a novel methodology called the mixture of Bayesian predictive syntheses (MBPS) for multiple time series count data for the challenging task of predicting the numbers of COVID-19 inpatients and isolated cases in Japan and Korea at the subnational level. MBPS combines a set of predictive models and partitions the multiple time series into clusters based on their contribution to predicting the outcome. In this way MBPS leverages the shared information within each cluster and is suitable for predicting COVID-19 inpatients since the data exhibit similar dynamics over multiple areas. Also, MBPS avoids using a multivariate count model, which is generally cumbersome to develop and implement. Our Japanese and Korean data analyses demonstrate that the proposed MBPS methodology has improved predictive accuracy and uncertainty quantification.
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