Back to Search Start Over

Deep Learning for Virus-Spreading Forecasting: a Brief Survey

Authors :
Baldo, Federico
Dall'Olio, Lorenzo
Ceccarelli, Mattia
Scheda, Riccardo
Lombardi, Michele
Borghesi, Andrea
Diciotti, Stefano
Milano, Michela
Publication Year :
2021

Abstract

The advent of the coronavirus pandemic has sparked the interest in predictive models capable of forecasting virus-spreading, especially for boosting and supporting decision-making processes. In this paper, we will outline the main Deep Learning approaches aimed at predicting the spreading of a disease in space and time. The aim is to show the emerging trends in this area of research and provide a general perspective on the possible strategies to approach this problem. In doing so, we will mainly focus on two macro-categories: classical Deep Learning approaches and Hybrid models. Finally, we will discuss the main advantages and disadvantages of different models, and underline the most promising development directions to improve these approaches.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.02346
Document Type :
Working Paper