Explosive Growth in Large-Scale Collaboration Networks
Abstract
We analyse the evolution of two large collaboration networks: the Microsoft Academic Graph (1800-2020) and Internet Movie Database (1900-2020), comprising 2.72 × 108 and 1.88 × 106 nodes respectively. The networks show super-linear growth, with node counts following power laws N(t) tα where α = 2.3 increasing to 3.1 after 1950 (MAG) and α = 1.8 (IMDb). Node and edge processes maintain stable but noisy timescale ratios (τN/τE ≈ 2.8 0.3 MAG, 2.3 0.2 IMDb). The probability of waiting a time t between successive collaborations was found to be scale-free, P(t) t-γ, with indices evolving from γ ≈ 2.3 to 1.6 (MAG) and 2.6 to 2.1 (IMDb). Academic collaboration sizes increased from 1.2 to 5.8 authors per paper, while entertainment collaborations remained more stable (3.2 to 4.5 actors). These observations indicate that current network models might be enhanced by considering accelerating growth, coupled timescales, and environmental influence, while explaining stable local properties.
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