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Fig. 4 | Applied Network Science

Fig. 4

From: Geometrical inspired pre-weighting enhances Markov clustering community detection in complex networks

Fig. 4

Community detection on nPSO networks (4th setting: γ fixed; N, m, T and C changing). Synthetic networks have been generated using the nPSO model with parameters N = [500, 1000] (network size) γ = 2 (power-law degree distribution exponent), m = [2, 4, 6, 8, 10, 12, 14, 16] (half of average degree), T = [0.1, 0.5] (temperature, inversely related to the clustering coefficient) and C = [6, 9, 12] (number of communities). For each combination of parameters, 10 networks have been generated. For each network the community detection methods have been executed and the communities detected have been compared to the annotated ones computing the Normalized Mutual Information (NMI). The plots report for each parameter combination the mean NMI and standard error over the random repetitions and show that, at low γ, the MCL performance is close to state of the art methods for low m, whereas it decreases for higher m

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