scholarly journals Why Can’t Neural Networks Forecast Pandemics Better

2021 ◽  
Vol 6 (1) ◽  
pp. 1-5
Author(s):  
Joshua D. Zelek ◽  
John S. Zelek ◽  
Alexander Wong

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 spatial targeting of intervention. We show that NN typically under-perform in forecasting Covid-19 active cases which can be attributed to the lack of training data which is common for forecasts. Our test data consists of the top ten countries for active Covid-19 cases early in the pandemic and is represented as a Time Series (TS). We found that Statistical methods outperform NN for most cases. Albeit, NN are still good pattern finders and we suggest that there are perhaps more productive ways other than purely data driven models of using NN to help produce better forecasts.

2021 ◽  
Vol 21 (13) ◽  
Author(s):  

Germany managed the first wave of the COVID-19 epidemic relatively well thanks to an early and vigorous public health response. Nonetheless, unprecedented disruptions to economic and social activity caused a deep recession in the first half of 2020. The gradual easing of containment measures since late-April has led to a partial revival of growth, but in late-October a “lockdown light” was announced to counter a new wave of infections, and restrictions were further tightened in mid-December. Significant risks remain about the pace and extent of the recovery as the uncertain course of the epidemic continues to impact economic activity.


2020 ◽  
Vol 17 (S1) ◽  
pp. 128-138 ◽  
Author(s):  
Rebecca E. Ford-Paz ◽  
Catherine DeCarlo Santiago ◽  
Claire A. Coyne ◽  
Claudio Rivera ◽  
Sisi Guo ◽  
...  

1992 ◽  
Vol 26 (9-11) ◽  
pp. 2461-2464 ◽  
Author(s):  
R. D. Tyagi ◽  
Y. G. Du

A steady-statemathematical model of an activated sludgeprocess with a secondary settler was developed. With a limited number of training data samples obtained from the simulation at steady state, a feedforward neural network was established which exhibits an excellent capability for the operational prediction and determination.


Author(s):  
Joshua M. Sharfstein

Issues of responsibility and blame are very rarely discussed in public health training, but are seldom forgotten in practice. Blame often follows a crisis, and leaders of health agencies should be able to think strategically about how to handle such accusations before being faced with the pain of dealing with them. When the health agency is not at all at fault, officials can make the case for a strong public health response without reservation. When the agency is entirely to blame, a quick and sincere apology can allow the agency to retain credibility. The most difficult situation is when the agency is partly to blame. The goal in this situation is to accept the appropriate amount of blame while working quickly to resolve the crisis.


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