Hawkes processes are used in statistical modeling for event clustering and causal inference, while they also can be viewed as stochastic versions of popular compartmental models used in epidemiology. Here we show how to develop accurate models of COVID-19 transmission using Hawkes processes with spatial–temporal covariates. We model the conditional intensity of new COVID-19 cases and deaths in the U.S. at the county level, estimating the dynamic reproduction number of the virus within an EM algorithm through a regression on Google mobility indices and demographic covariates in the maximization step. We validate the approach on both short-term and long-term forecasting tasks, showing that the Hawkes process outperforms several models current...
The COVID-19 pandemic has had worldwide devastating effects on human lives, highlighting the need fo...
COVID-19 has long become a worldwide pandemic. It is responsible for the death of over two million p...
We present three data driven model-types for COVID-19 with a minimal number of parameters to provide...
The self-exciting Hawkes point process model (Hawkes, 1971) has been used to describe and forecast c...
The COVID-19 virus continues to generate waves of infections around the world. With major areas in d...
Background: We investigate epidemiological models, their parameters, and the models’ predictive perf...
As more and more datasets with self-exciting properties become available, the demand for robust mode...
This study aims to use data provided by the Virginia Department of Public Health to illustrate the c...
Predictions of COVID-19 case growth and mortality are critical to the decisions of political leaders...
The impact of COVID-19 across the United States (US) has been heterogeneous, with rapid spread and g...
Mathematical models are widely recognized as an important tool for analyzing and understanding the d...
Short-term probabilistic forecasts of the trajectory of the COVID-19 pandemic in the United States h...
Short-term probabilistic forecasts of the trajectory of the COVID-19 pandemic in the United States h...
Motivated by the recent outbreak of coronavirus (COVID-19), we propose a stochastic model of epidemi...
Background: The world is experiencing local/regional hot-spots and spikes of the severe acute respi...
The COVID-19 pandemic has had worldwide devastating effects on human lives, highlighting the need fo...
COVID-19 has long become a worldwide pandemic. It is responsible for the death of over two million p...
We present three data driven model-types for COVID-19 with a minimal number of parameters to provide...
The self-exciting Hawkes point process model (Hawkes, 1971) has been used to describe and forecast c...
The COVID-19 virus continues to generate waves of infections around the world. With major areas in d...
Background: We investigate epidemiological models, their parameters, and the models’ predictive perf...
As more and more datasets with self-exciting properties become available, the demand for robust mode...
This study aims to use data provided by the Virginia Department of Public Health to illustrate the c...
Predictions of COVID-19 case growth and mortality are critical to the decisions of political leaders...
The impact of COVID-19 across the United States (US) has been heterogeneous, with rapid spread and g...
Mathematical models are widely recognized as an important tool for analyzing and understanding the d...
Short-term probabilistic forecasts of the trajectory of the COVID-19 pandemic in the United States h...
Short-term probabilistic forecasts of the trajectory of the COVID-19 pandemic in the United States h...
Motivated by the recent outbreak of coronavirus (COVID-19), we propose a stochastic model of epidemi...
Background: The world is experiencing local/regional hot-spots and spikes of the severe acute respi...
The COVID-19 pandemic has had worldwide devastating effects on human lives, highlighting the need fo...
COVID-19 has long become a worldwide pandemic. It is responsible for the death of over two million p...
We present three data driven model-types for COVID-19 with a minimal number of parameters to provide...