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Determining Mean First-Passage Time for Random Walks on Stochastic Uniform Growth Tree Networks

计算机科学 随机游动 树(集合论) 随机过程 数学 组合数学 统计
作者
Fei Ma,Ping Wang
出处
期刊:IEEE Transactions on Knowledge and Data Engineering [Institute of Electrical and Electronics Engineers]
卷期号:36 (11): 5940-5953
标识
DOI:10.1109/tkde.2024.3392786
摘要

As known, the commonly-utilized ways to determine mean first-passage time F for random walk on networks are mainly based on Laplacian spectra. However, methods of this type can become prohibitively complicated and even fail to work when the Laplacian matrix of network under consideration is difficult to describe in the first place. In this paper, we propose an effective approach to determining quantity F on some widely-studied tree networks. To this end, we first build up a general formula between Wiener index W and F on a tree. This enables us to convert issues to answer into calculation of W on networks in question. As opposed to most of previous work focusing on deterministic growth trees, our goal is to consider stochastic case. Towards this end, we establish a principled framework where randomness is introduced into the process of growing trees. As an immediate consequence, the previously published results upon deterministic cases are thoroughly covered by formulas established in this paper. Additionally, it is also straightforward to obtain Kirchhoff index on our tree networks using the proposed approach. Most importantly, our approach is more manageable than some other methods including spectral technique in situations considered herein

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