作者
Massimo Bernaschi, Alessandro Celestini, Stefano Guarino, Enrico Mastrostefano, Fabio Saracco
发表日期
2022/10/28
期刊
Scientific Reports
卷号
12
期号
1
页码范围
18206
出版商
Nature Publishing Group UK
简介
Models of networks play a major role in explaining and reproducing empirically observed patterns. Suitable models can be used to randomize an observed network while preserving some of its features, or to generate synthetic graphs whose properties may be tuned upon the characteristics of a given population. In the present paper, we introduce the Fitness-Corrected Block Model, an adjustable-density variation of the well-known Degree-Corrected Block Model, and we show that the proposed construction yields a maximum entropy model. When the network is sparse, we derive an analytical expression for the degree distribution of the model that depends on just the constraints and the chosen fitness-distribution. Our model is perfectly suited to define maximum-entropy data-driven spatial social networks, where each block identifies vertices having similar position (e.g., residence) and age, and where the expected …
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