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Indexed by:会议论文
Date of Publication:2015-08-26
Included Journals:EI、CPCI-S、Scopus
Page Number:147-152
Key Words:Disease Dynamics Prediction; Knowledge of Network Structure; Human Contact Networks
Abstract:Recent studies show that the degree distribution of realistic contact networks impacts the prediction accuracy for disease dynamics during an epidemic. Based on the surveillance data of the Ebola outbreak in 2014, not only the basic structural knowledge degree distribution but also another structural knowledge clustering, affect the prediction accuracy for disease dynamics, and their impacts are different. In this paper, combining degree distribution with clustering, we design an new algorithm to predict disease dynamics with the improved accuracy. Based on our extensive experiments, we find that the structural knowledge (degree distribution and clustering) of contact networks is helpful to improve the prediction accuracy for disease dynamics, as compared with the algorithm that just considers the degree distribution of contact networks.