Non-Markovian Majority-Vote model
Hanshuang Chen, Shuang Wang, Chuansheng Shen, Haifeng Zhang, and Ginestra Bianconi

TL;DR
This paper introduces a non-Markovian Majority-Vote model incorporating memory effects based on agents' age, revealing how aging and anti-aging dynamics influence phase transitions in opinion models.
Contribution
It develops a novel non-Markovian extension of the Majority-Vote model that accounts for agents' age-dependent transition probabilities, analyzing its impact on critical noise.
Findings
Critical noise exhibits non-monotonic behavior with aging rate.
Aging increases the critical noise, anti-aging decreases it.
Analytical results align with simulations across network types.
Abstract
Non-Markovian dynamics pervades human activity and social networks and it induces memory effects and burstiness in a wide range of processes including inter-event time distributions, duration of interactions in temporal networks and human mobility. Here we propose a non-Markovian Majority-Vote model (NMMV) that introduces non-Markovian effects in the standard (Markovian) Majority-Vote model (SMV). The SMV model is one of the simplest two-state stochastic models for studying opinion dynamics, and displays a continuous order-disorder phase transition at a critical noise. In the NMMV model we assume that the probability that an agent changes state is not only dependent on the majority state of his neighbors but it also depends on his {\em age}, i.e. how long the agent has been in his current state. The NMMV model has two regimes: the aging regime implies that the probability that an agent…
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