Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have typically under-performed when compared to traditional statistical methods. When they have performed well, the underlying methods have been ensembles of NN and statistical methods. Forecasting stock markets, medical, infrastructure dynamics, social activity or pandemics each have their own challenges. In this study, we evaluate the strengths of a collection of methods for forecasting pandemics such as Covid-19 using NN, statistical methods as well as parameterized mechanistic models. Forecasts of epidemics can inform public health response and decision making, so accurate forecasting is crucial for general public notification, timing and spa...
We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical gr...
Many studies examine the use of Neural Networks (NNs) as a tool for business time series forecasting...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
The new coronavirus (COVID-19) has spread to over 200 countries, with over 36 million confirmed case...
In this study, a comprehensive analysis of classical linear regression forecasting models and deep l...
Abstract: The emergence of the novel coronavirus (COVID-19) in 2019 has presented the world with an ...
The design of intelligent systems for analyzing information and predicting the epidemiological trend...
The COVID-19 pandemic has widely spread with an increasing infection rate through more than 200 coun...
Abstract: The COVID-19 pandemic has posed unprecedented challenges to global healthcare systems, nec...
Abstract: In, this research embodies the spirit of interdisciplinary collaboration, bringing togethe...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
The Artificial Neural Network (ANN) is a computer technique that uses a mathematical model to repres...
The COVID-19 pandemic has caused a global crisis with 47,209,305 confirmed cases and 1,209,505 confi...
Epidemic is a rapid and wide spread of infectious disease threatening many lives and economy damages...
We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical gr...
Many studies examine the use of Neural Networks (NNs) as a tool for business time series forecasting...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
The new coronavirus (COVID-19) has spread to over 200 countries, with over 36 million confirmed case...
In this study, a comprehensive analysis of classical linear regression forecasting models and deep l...
Abstract: The emergence of the novel coronavirus (COVID-19) in 2019 has presented the world with an ...
The design of intelligent systems for analyzing information and predicting the epidemiological trend...
The COVID-19 pandemic has widely spread with an increasing infection rate through more than 200 coun...
Abstract: The COVID-19 pandemic has posed unprecedented challenges to global healthcare systems, nec...
Abstract: In, this research embodies the spirit of interdisciplinary collaboration, bringing togethe...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
The Artificial Neural Network (ANN) is a computer technique that uses a mathematical model to repres...
The COVID-19 pandemic has caused a global crisis with 47,209,305 confirmed cases and 1,209,505 confi...
Epidemic is a rapid and wide spread of infectious disease threatening many lives and economy damages...
We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical gr...
Many studies examine the use of Neural Networks (NNs) as a tool for business time series forecasting...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...