| Literature DB >> 24387566 |
Sadegh Motallebi1, Sadegh Aliakbary1, Jafar Habibi1.
Abstract
Real networks exhibit nontrivial topological features, such as heavy-tailed degree distribution, high clustering, and small-worldness. Researchers have developed several generative models for synthesizing artificial networks that are structurally similar to real networks. An important research problem is to identify the generative model that best fits to a target network. In this paper, we investigate this problem and our goal is to select the model that is able to generate graphs similar to a given network instance. By the means of generating synthetic networks with seven outstanding generative models, we have utilized machine learning methods to develop a decision tree for model selection. Our proposed method, which is named "Generative Model Selection for Complex Networks," outperforms existing methods with respect to accuracy, scalability, and size-independence.Entities:
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Year: 2013 PMID: 24387566 DOI: 10.1063/1.4840235
Source DB: PubMed Journal: Chaos ISSN: 1054-1500 Impact factor: 3.642