Francesco Tudisco

Associate Professor (Reader) in Machine Learning

School of Mathematics, The University of Edinburgh
The Maxwell Institute for Mathematical Sciences
School of Mathematics, Gran Sasso Science Institute JCMB, King’s Buildings, Edinburgh EH93FD UK
email: f dot tudisco at ed.ac.uk

Hitting times for second-order random walks

Dario Fasino, Arianna Tonetto, Francesco Tudisco,
European Journal of Applied Mathematics, 34 : 642--666 (2022)

Abstract

A second-order random walk on a graph or network is a random walk where transition probabilities depend not only on the present node but also on the previous one. A notable example is the non-backtracking random walk, where the walker is not allowed to revisit a node in one step. Second-order random walks can model physical diffusion phenomena in a more realistic way than traditional random walks and have been very successfully used in various network mining and machine learning settings. However, numerous questions are still open for this type of stochastic processes. In this work we extend well-known results concerning mean hitting and return times of standard random walks to the second-order case. In particular, we provide simple formulas that allow us to compute these numbers by solving suitable systems of linear equations. Moreover, by introducing the “pullback” first-order stochastic process of a second-order random walk, we provide second-order versions of the renowned Kac’s and random target lemmas.

Please cite this paper as:

@article{fasino2022hitting,
  title={Hitting times for second-order random walks},
  author={Fasino, Dario and Tonetto, Arianna and Tudisco, Francesco},
  journal={European Journal of Applied Mathematics},
  year={2022}
}

Links: arxiv doi

Keywords: random walk non-backtracking networks higher-order networks