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Inference of a universal social scale and segregation measures using social connectivity kernels
[post]
2020
unpublished
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
doi:10.31235/osf.io/5ecgp
fatcat:4ozcjnok65gmpmmgqndkge3zm4