A spatial small-world graph arising from activity-based reinforcement
classification
🧮 math.PR
cs.DM
keywords
graphrandomreinforcementactivity-basedmechanismmodelsmall-worldspatial
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In the classical preferential attachment model, links form instantly to newly arriving nodes and do not change over time. We propose a hierarchical random graph model in a spatial setting, where such a time-variability arises from an activity-based reinforcement mechanism. We show that the reinforcement mechanism converges, and prove rigorously that the resulting random graph exhibits the small-world property. A further motivation for this random graph stems from modeling synaptic plasticity.
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