TL;DR
This paper introduces a universal measure of social segregation based on social connectivity kernels, enabling comparison across societies and attributes, and demonstrates its application to real-world social network data.
Contribution
It develops a family of segregation statistics with a universal scale and applies Bayesian inference to real datasets, revealing stable social patterns across time and space.
Findings
Physical separation and age differences significantly impact segregation.
The proposed measures enable cross-society comparisons.
Social fabric remains stable across different contexts.
Abstract
How people connect with one another is a fundamental question in the social sciences, and the resulting social networks can have a profound impact on our daily lives. Blau offered a powerful explanation: people connect with one another based on their positions in a social space. Yet a principled measure of social distance, allowing comparison within and between societies, remains elusive. We use the connectivity kernel of conditionally-independent edge models to develop a family of segregation statistics with desirable properties: they offer an intuitive and universal characteristic scale on social space (facilitating comparison across datasets and societies), are applicable to multivariate and mixed node attributes, and capture segregation at the level of individuals, pairs of individuals, and society as a whole. We show that the segregation statistics can induce a metric on Blau space…
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