An Information-theoretic Analysis of Edge-reinforced Random Walks
Qinghua (Devon) Ding, Venkat Anantharam

TL;DR
This paper analyzes the information-theoretic properties of edge-reinforced random walks on finite graphs, focusing on entropy, divergence, and their implications for statistical testing of different ERRW models.
Contribution
It derives explicit formulas and bounds for entropy rate and KL divergence of ERRWs, advancing understanding of their statistical distinguishability.
Findings
Derived an annealed representation of the entropy rate.
Obtained a closed-form formula for environment-level KL divergence.
Provided bounds on trajectory-level KL divergence convergence.
Abstract
Reinforced random walks are random walks on graphs whose transition probabilities along edges from a vertex are proportional to the weights of those edges, but where the weight of an edge evolves in a way that depends on the past traversals across it. In an edge-reinforced random walk (ERRW), the weight of an edge increases by whenever that edge is traversed, in either direction. On a finite graph, an ERRW admits a remarkable representation as a random walk in a random environment. The law of the environment is given by the so-called {\em magic formula}, with this law depending on the initial edge weights. This representation provides a natural route for studying statistical properties of ERRWs. This work focuses on various information-theoretic quantities associated with ERRWs on finite graphs, motivated in part by the problem of statistically distinguishing between different…
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