<div><p>A variety of filtering methods enable the recursive estimation of system state variables and inference of model parameters. These methods have found application in a range of disciplines and settings, including engineering design and forecasting, and, over the last two decades, have been applied to infectious disease epidemiology. For any system of interest, the ideal filter depends on the nonlinearity and complexity of the model to which it is applied, the quality and abundance of observations being entrained, and the ultimate application (e.g. forecast, parameter estimation, etc.). Here, we compare the performance of six state-of-the-art filter methods when used to model and forecast influenza activity. Three particle filters—a ba...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
Simulation models are important tools for real-time forecasting of pandemics. Models help health dec...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
A variety of filtering methods enable the recursive estimation of system state variables and inferen...
A variety of filtering methods enable the recursive estimation of system state variables and inferen...
<div><p>Recent advances in mathematical modeling and inference methodologies have enabled developmen...
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditio...
Epidemics of seasonal influenza inflict a huge burden in temperate climes such as Melbourne (Austral...
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditio...
Abstract Background While a new generation of computational statistics algorithms and availability o...
Seasonal influenza results in substantial annual morbidity and mortality in the United States and wo...
A variety of mechanistic and statistical methods to forecast seasonal influenza have been proposed a...
Abstract Background Over the past few decades, numerous forecasting methods have been proposed in th...
Accurate prediction of flu activity enables health officials to plan disease prevention and allocate...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
Simulation models are important tools for real-time forecasting of pandemics. Models help health dec...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
A variety of filtering methods enable the recursive estimation of system state variables and inferen...
A variety of filtering methods enable the recursive estimation of system state variables and inferen...
<div><p>Recent advances in mathematical modeling and inference methodologies have enabled developmen...
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditio...
Epidemics of seasonal influenza inflict a huge burden in temperate climes such as Melbourne (Austral...
In epidemic modeling, state filtering is an excellent tool for enhancing the performance of traditio...
Abstract Background While a new generation of computational statistics algorithms and availability o...
Seasonal influenza results in substantial annual morbidity and mortality in the United States and wo...
A variety of mechanistic and statistical methods to forecast seasonal influenza have been proposed a...
Abstract Background Over the past few decades, numerous forecasting methods have been proposed in th...
Accurate prediction of flu activity enables health officials to plan disease prevention and allocate...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...
Simulation models are important tools for real-time forecasting of pandemics. Models help health dec...
Process-based models have been used to simulate and forecast a number of nonlinear dynamical systems...