A statistical mechanics approach to Granovetter theory
Adriano Barra, Elena Agliari

TL;DR
This paper introduces a minimal statistical mechanics model that reproduces key social behaviors, including strong and weak ties and small-world properties, bridging theoretical and empirical insights in sociology and economics.
Contribution
It develops a novel Hamiltonian-based model extending neural network approaches to explain social decision-making and network phenomena.
Findings
Reproduces Granovetter and Watts-Strogats social network results
Explains the role of strong and weak ties in social influence
Models out-of-equilibrium properties of social systems
Abstract
In this paper we try to bridge breakthroughs in quantitative sociology/econometrics pioneered during the last decades by Mac Fadden, Brock-Durlauf, Granovetter and Watts-Strogats through introducing a minimal model able to reproduce essentially all the features of social behavior highlighted by these authors. Our model relies on a pairwise Hamiltonian for decision maker interactions which naturally extends the multi-populations approaches by shifting and biasing the pattern definitions of an Hopfield model of neural networks. Once introduced, the model is investigated trough graph theory (to recover Granovetter and Watts-Strogats results) and statistical mechanics (to recover Mac-Fadden and Brock-Durlauf results). Due to internal symmetries of our model, the latter is obtained as the relaxation of a proper Markov process, allowing even to study its out of equilibrium properties. The…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Complex Systems and Time Series Analysis
