Random walks with preferential relocations and fading memory: a study through random recursive trees
Autor: | Gerónimo Uribe Bravo, Cécile Mailler |
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Jazyk: | angličtina |
Rok vydání: | 2019 |
Předmět: |
Statistics and Probability
Discrete mathematics Markov chain Stochastic process Markov process Statistical and Nonlinear Physics Random walk 01 natural sciences Tree (graph theory) Normal distribution 010104 statistics & probability symbols.namesake 0103 physical sciences Random tree symbols 0101 mathematics Statistics Probability and Uncertainty 010306 general physics Mathematics - Probability Condensed Matter - Statistical Mechanics Central limit theorem |
Zdroj: | Mailler, C & Uribe Bravo, G 2019, ' Random walks with preferential relocations and fading memory: a study through random recursive trees. ', Journal of Statistical Mechanics-Theory and Experiment, vol. 2019, no. 9, 093206, pp. 1-50 . https://doi.org/10.1088/1742-5468/ab081f |
Popis: | Consider a stochastic process that behaves as a $d$-dimensional simple and symmetric random walk, except that, with a certain fixed probability, at each step, it chooses instead to jump to a given site with probability proportional to the time it has already spent there. This process has been analyzed in the physics literature under the name "random walk with preferential relocations", where it is argued that the position of the walker after $n$ steps, scaled by $\log n$, converges to a Gaussian random variable; because of the $\log$ spatial scaling, the process is said to undergo a "slow diffusion". In this paper, we generalize this model by allowing the underlying random walk to be any Markov process and the random run-lengths (time between two relocations) to be i.i.d.-distributed. We also allow the memory of the walker to fade with time, meaning that when a relocations occurs, the walker is more likely to go back to a place it has visited more recently. We prove rigorously the central limit theorem described above (plus a local limit theorem and the convergence of the weighted occupation measure) by associating to the process a growing family of vertex-weighted random recursive trees and a Markov chain indexed by this tree. The spatial scaling of our relocated random walk is related to the height of a "typical" vertex in the random tree. This typical height can range from doubly-logarithmic to logarithmic or even a power of the number of nodes of the tree, depending on the form of the memory. |
Databáze: | OpenAIRE |
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