Reproduction number (R), defined as the average number of people that will be infected by an individual who has the infection, plays a central role in predicting the evolution of an infectious disease outbreak. However, the R most certainly varies by location and time due to multiple factors, such as regional demographic characteristics, community behaviors, health policy decisions, etc. To study disease transmission dynamics, we proposed a constructive learning system for pandemic prevention by modeling the instantaneous reproduction number Rt, t≥0, which can vary over time. Under the framework of quasi-score method, we proposed an online algorithm to iteratively estimate Rt using an observation-driven time-since-infection model with a latent time series structure, and to study the impact of covariates on its variation. Our estimators allow a close monitor and dynamic update on the knowledge of Rt whenever new data are available and allow a forecasting of future Rt under different conditions to provide guidance for policymaking. The proposed method has been applied to a national dataset with more than 800 counties and 5 million cases in the United States, the results of which made profound impacts during key moments in the pandemic.



 



Moreover, bridging from theoretical probability results to statistical-epidemiological modeling, this talk introduces two Cramér type moderate deviation theorems for two Studentized statistics with applications to a simultaneous hypothesis testing problem and a joint confidence band construction problem in disease transmission modeling.



 



Keywords: instantaneous reproduction number; observation-driven model; Quasi-score; time series; decision making; Cramér type moderate deviation theorems; Studentized; high-dimensional; simultaneous hypothesis testing; joint confidence band; COVID-19

29 Apr 2022
10:00am - 11:00am
Where
https://hkust.zoom.us/j/6827297694 (Passcode: 7436)
Speakers/Performers
Dr. Jiasheng SHI
University of Pennsylvania
Organizer(S)
Department of Mathematics
Contact/Enquiries
Payment Details
Audience
Alumni, Faculty and staff, PG students, UG students
Language(s)
English
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