Universal Network Generation Model via Exponential Probabilistic Growth and Vari-linear Preferential Attachment
Jinhu Ren, Linyuan L\"u

TL;DR
This paper introduces a novel vari-linear network generation model that combines exponential probabilistic growth with vari-linear preferential attachment, improving the realism and universality of generated networks.
Contribution
It presents a new network generation approach that overcomes limitations of traditional models, achieving better fit to real-world networks and unifying classical network characteristics.
Findings
Model describes real-world networks more comprehensively.
Performance exceeds traditional methods on diverse datasets.
Achieves a unified interpretation of classical network features.
Abstract
Generated networks are widely used in network-based research as a convenient simulation environment. Generating universal networks that more accurately reflect real-world patterns is a cornerstone task. This study proposes a vari-linear network generation model that incorporates two core mechanisms: exponential probabilistic growth and vari-linear preferential attachment. It concurrently overcomes the limitations of traditional growth in characterizing the low-degree region of the degree distribution and the issues regarding the universality of linear preferential attachment. Results indicate that our model describes real-world networks more comprehensively and faithfully, and is highly interpretable. Its performance on diverse empirical datasets is several times better than traditional methods. Related mechanisms and conclusions are substantiated through ablation experiments and…
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