DocumentCode
3576582
Title
Statistical analysis and a social network model based on the SEIQR framework
Author
Chimmalee, B. ; Sawangtong, W. ; Suwandechochai, R. ; Chamchod, F.
Author_Institution
Dept. of Math., Mahidol Univ., Bangkok, Thailand
fYear
2014
Firstpage
414
Lastpage
418
Abstract
Understanding, the spread of infectious diseases is an important key to efficiently control them. In this study, a susceptible-exposed-infectious-quarantined-recovered (SEIQR) model incorporated with adynamic social network is proposed to investigate the disease transmission dynamics in the human population and how the number of individual´s neighbor (degree of a node), and the longest distance between any two neighboring nodes (the contact radius) influence the number of infectious individuals. Our results indicate that(l) the larger contact radius of an individual node leads to the higher number of infectious individuals (2) the degree of a node has significant effect on individual infection (the higher the degree of the node, the higher the possibility that individuals represented by those nodes spread the disease) and (3) the probability of successful infection can be estimated as a function of the degree of a node by the binary logistic regression model and we found that it may affect the outbreak period.
Keywords
diseases; medical information systems; regression analysis; social networking (online); SEIQR framework; binary logistic regression model; contact radius; disease transmission dynamics; infectious disease; probability; social network model; statistical analysis; susceptible-exposed-infectious-quarantined-recovered model; Analytical models; Diseases; Logistics; Mathematical model; Social network services; Sociology; Statistics; SEIQR model; degree of a node; disease transmission; social networks;
fLanguage
English
Publisher
ieee
Conference_Titel
Industrial Engineering and Engineering Management (IEEM), 2014 IEEE International Conference on
Type
conf
DOI
10.1109/IEEM.2014.7058671
Filename
7058671
Link To Document