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  1. Taming vagueness: the philosophy of network science.Gábor Elek & Eszter Babarczy - 2022 - Synthese 200 (2):1-31.
    In the last 20 years network science has become an independent scientific field. We argue that by building network models network scientists are able to tame the vagueness of propositions about complex systems and networks, that is, to make these propositions precise. This makes it possible to study important vague properties such as modularity, near-decomposability, scale-freeness or being a small world. Using an epistemic model of network science, we systematically analyse the specific nature of network models and the logic behind (...)
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  • A Continuous Approximation Approach Based on Regular Hexagon Partition for the Facility Location Problem under Disruptions Risk.Jiguang Wang & Yucai Wu - 2019 - Complexity 2019:1-12.
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  • Networks metrics and ball possession in professional football.José Gama, Gonçalo Dias, Micael Couceiro, Tiago Sousa & Vasco Vaz - 2016 - Complexity 21 (S2):342-354.
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  • A set of measures to quantify the dynamicity of longitudinal social networks.Shahadat Uddin, Arif Khan & Mahendra Piraveenan - 2016 - Complexity 21 (6):309-320.
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  • Distribution of human response times.Tao Ma, John G. Holden & R. A. Serota - 2016 - Complexity 21 (6):61-69.
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  • Mining Community-Level Influence in Microblogging Network: A Case Study on Sina Weibo.Yufei Liu, Dechang Pi & Lin Cui - 2017 - Complexity:1-16.
    Social influence analysis is important for many social network applications, including recommendation and cybersecurity analysis. We observe that the influence of community including multiple users outweighs the individual influence. Existing models focus on the individual influence analysis, but few studies estimate the community influence that is ubiquitous in online social network. A major challenge lies in that researchers need to take into account many factors, such as user influence, social trust, and user relationship, to model community-level influence. In this paper, (...)
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  • Complexity at the social science interface.Nigel Gilbert & Seth Bullock - 2014 - Complexity 19 (6):1-4.
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