Abstract Many state-of-the-art researches focus on predicting infection scale or threshold in infectious diseases or rumor and give the vaccination strategies correspondingly. In these works, most of them assume that the infection probability and initially infected individuals are known at the very beginning. Generally, infectious diseases or rumor has been spreading for some time when it is noticed. How to predict which individuals will be infected in the future only by knowing the current snapshot becomes a key issue in infectious diseases or rumor control. In this report, a prediction model based on snapshot is presented to predict the potentially infected individuals in the future, not just the macro scale of infection. Experimental res...
Intelligent data analysis based on artificial intelligence and Big Data tools is widely used by the ...
Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. In ...
Recently, traditional epidemic models are used to investigate social infectious disease systems such...
The massive employment of computational models in network epidemiology calls for the development of ...
In this paper we tackle the following question: is it possible to predict the characteristics of the...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
When an infection spreads in a community, an individual's probability of becoming infected depends o...
The application of machine learning (ML) techniques spans a vast spectrum of applications ranging fr...
To what extent can online social networks predict who is at risk of an infection? Many infections ar...
When an infection spreads in a community, an individual's probability of becoming infected depends o...
© 2019 Coviello et al. This is an open access article distributed under the terms of the Creative Co...
The study of the impact of human activity patterns on network dynamics has attracted a lot of attent...
International audienceMany progresses in the understanding of epidemic spreading models have been ob...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
Spreading processes are ubiquitous in nature and societies, e.g. spreading of diseases and computer ...
Intelligent data analysis based on artificial intelligence and Big Data tools is widely used by the ...
Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. In ...
Recently, traditional epidemic models are used to investigate social infectious disease systems such...
The massive employment of computational models in network epidemiology calls for the development of ...
In this paper we tackle the following question: is it possible to predict the characteristics of the...
Infectious diseases are studied to understand their spreading mechanisms, to evaluate control strate...
When an infection spreads in a community, an individual's probability of becoming infected depends o...
The application of machine learning (ML) techniques spans a vast spectrum of applications ranging fr...
To what extent can online social networks predict who is at risk of an infection? Many infections ar...
When an infection spreads in a community, an individual's probability of becoming infected depends o...
© 2019 Coviello et al. This is an open access article distributed under the terms of the Creative Co...
The study of the impact of human activity patterns on network dynamics has attracted a lot of attent...
International audienceMany progresses in the understanding of epidemic spreading models have been ob...
In this PhD dissertation, we study epidemics on networks of contacts through the lens of statistical...
Spreading processes are ubiquitous in nature and societies, e.g. spreading of diseases and computer ...
Intelligent data analysis based on artificial intelligence and Big Data tools is widely used by the ...
Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. In ...
Recently, traditional epidemic models are used to investigate social infectious disease systems such...