Genetic clustering of social networks using random walks |
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Authors: | Aykut Firat Sangit Chatterjee Mustafa Yilmaz |
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Affiliation: | College of Business Administration, Northeastern University, Boston, MA 02115, USA |
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Abstract: | In the era of globalization, traditional theories and models of social systems are shifting their focus from isolation and independence to networks and connectedness. Analyzing these new complex social models is a growing, and computationally demanding area of research. In this study, we investigate the integration of genetic algorithms (GAs) with a random-walk-based distance measure to find subgroups in social networks. We test our approach by synthetically generating realistic social network data sets. Our clustering experiments using random-walk-based distances reveal exceptionally accurate results compared with the experiments using Euclidean distances. |
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Keywords: | Genetic algorithms Clustering with medoids Synthetic data generation |
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