Probabilistic Growth and Vari-linear Preferential Attachment in Random Networks
Abstract
Random networks are convenient foundational platforms widely employed in network experiments. Generating networks that more accurately reflect real-world patterns is a significant topic within complex network research. This work propose a new network formation model: the vari-linear network, which includes two core mechanisms: exponential probabilistic growth and vari-linear preferential attachment. It overcomes the limitation of traditional growth mechanism in characterising low-degree distributions. And confirms that controlling the extent of non-linear in preferential attachment is key to achieving a better fit to the real network's degree distribution pattern. The results show that the vari-linear network model maintains high fitting accuracy across multiple real-world networks of varying types and scales. And exhibits several-fold performance advantages over traditional methods. Meanwhile, it provides a unified theoretical explanation for classic topological characteristics such as small-world networks and scale-free networks. It not only provides a more quality foundational network framework for network research, but also serve as the brand new paradigm for bridging the conceptual divide between various classical network models.