Evolution of recursive trees with limited memory
Omer Angel, Shankar Bhamidi, Serte Donderwinkel, Neeladri Maitra, Akshay Sakanaveeti

TL;DR
This paper investigates how recursive trees evolve when new vertices have limited memory of the network, revealing different local and global behaviors depending on the information density, including phase transitions and asymptotic properties.
Contribution
It introduces a novel model of recursive tree growth with partial information and analyzes its asymptotic local and global properties across different regimes.
Findings
Local limit in macroscopic regime is a continuous-time branching process.
Tree height is logarithmic in macroscopic regime and polynomial in mesoscopic regime.
Global structure exhibits a phase transition at 5=1/2 in the mesoscopic regime.
Abstract
Motivated by questions in social networks, distributed computing and probabilistic combinatorics, the last few years have seen increasing interest in network evolution models where new vertices entering the system need to make decisions based on a partial snapshot of the current state of the network. This paper considers a specific variant of the classical random recursive tree dynamics, where a vertex at time has information only on those vertices that have arrived in the interval for a sequence , and connects to vertices uniformly at random amongst this set. We consider two different regimes on the density information, termed macroscopic and mesoscopic regimes, which respectively correspond to for some , and for some . Our main interest is in studying asymptotics of various…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Complex Network Analysis Techniques · Theoretical and Computational Physics
