Algoritmo genético basado en coeficiente de agrupamiento para la detección de comunidades en red de docentes de la Universidad Industrial de Santander
DOI:
https://doi.org/10.26507/rei.v17n33.1187Keywords:
Algoritmo genético, detección de comunidades, coeficiente de clustering.Abstract
Around the world, the academies are the most important concentration and diffusion center of knowledge for society. Through their professional training programs, they constantly provide to the society high quality knowledge engines, which through well-established alliances through scientific popularization, are able to provide solutions in different forms to the diverse needs and concerns that overwhelm in everyday life. In this research work, it seeks to solve the community detection problem (CD) through a clustering coefficient based genetic algorithm (CC-GA) to a collaborative network of the Universidad Industrial de Santander formed by teachers who have directed and co-directed work on campus in different programs to which they are originally linked. this will establish the condition of interdisciplinary collaboration of the network, as well as identify the most participatory teachers in these modalities, among other representative characteristics of the network
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