Epicasting: An Ensemble Wavelet Neural Network (EWNet) for Forecasting
Epidemics
- URL: http://arxiv.org/abs/2206.10696v1
- Date: Tue, 21 Jun 2022 19:31:25 GMT
- Title: Epicasting: An Ensemble Wavelet Neural Network (EWNet) for Forecasting
Epidemics
- Authors: Madhurima Panja, Tanujit Chakraborty, Uttam Kumar, Nan Liu
- Abstract summary: Infectious diseases remain among the top contributors to human illness and death worldwide.
Forecasts of epidemics can assist stakeholders in tailoring countermeasures to the situation at hand.
- Score: 2.705025060422369
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Infectious diseases remain among the top contributors to human illness and
death worldwide, among which many diseases produce epidemic waves of infection.
The unavailability of specific drugs and ready-to-use vaccines to prevent most
of these epidemics makes the situation worse. These force public health
officials, health care providers, and policymakers to rely on early warning
systems generated by reliable and accurate forecasts of epidemics. Accurate
forecasts of epidemics can assist stakeholders in tailoring countermeasures,
such as vaccination campaigns, staff scheduling, and resource allocation, to
the situation at hand, which could translate to reductions in the impact of a
disease. Unfortunately, most of these past epidemics (e.g., dengue, malaria,
hepatitis, influenza, and most recent, Covid-19) exhibit nonlinear and
non-stationary characteristics due to their spreading fluctuations based on
seasonal-dependent variability and the nature of these epidemics. We analyze a
wide variety of epidemic time series datasets using a maximal overlap discrete
wavelet transform (MODWT) based autoregressive neural network and call it
EWNet. MODWT techniques effectively characterize non-stationary behavior and
seasonal dependencies in the epidemic time series and improve the forecasting
scheme of the autoregressive neural network in the proposed ensemble wavelet
network framework. From a nonlinear time series viewpoint, we explore the
asymptotic stationarity of the proposed EWNet model to show the asymptotic
behavior of the associated Markov Chain. We also theoretically investigate the
effect of learning stability and the choice of hidden neurons in the proposed
EWNet model. From a practical perspective, we compare our proposed EWNet
framework with several statistical, machine learning, and deep learning models
that have been previously used for epidemic forecasting.
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