A Cluster Model for Growth of Random Trees
Nomvelo Sibisi

TL;DR
This paper introduces a cluster-based probabilistic model for the growth of random trees, incorporating vertex mass and deriving joint distributions of cluster masses, extending classical models with new theoretical insights.
Contribution
It presents a novel theorem for the joint distribution of cluster masses conditioned on their distributions, generalizing previous models by including stable and Lévý distributions.
Findings
Derived the joint distribution of cluster masses conditioned on their distributions.
Extended the model to include stable and Lévý distributions with explicit marginals.
Connected the model to Dirichlet and other distributions through conditioning choices.
Abstract
We first consider the growth of trees by probabilistic attachment of new vertices to leaves. This leads to a growth model based on vertex clusters and probabilities assigned to clusters. This model turns out to be readily applicable to attachment at any depth of the tree, hence the paper evolves to a general study of tree growth by cluster-based attachment. Drawing inspiration from the concept of intrinsic vertex fitness due to Bianconi and Barab\'asi, we introduce vertex mass as an additive intrinsic vertex attribute. Unlike Bianconi and Barab\'asi who used fitness as a vertex degree multiplier in the context of growth by preferential attachment, we treat vertex mass as a fundamental probabilistic construct whose additivity plays a primary role. Notably, independent mass distributions induce a distribution on the sum of such masses through Laplace convolution. In this way, clusters of…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Complex Network Analysis Techniques · Plant and animal studies
