Delta Conformity Sociopatterns Analysis - Delta Conformity Sociopatterns Analysis

Overview

Delta_Conformity_Sociopatterns_Analysis

∆-Conformity is a local homophily measure in attributed stream graphs.

The measure is implemented in DynetX (https://github.com/GiulioRossetti/dynetx) and introduced in:

S. Citraro, L. Milli, R. Cazabet and G. Rossetti

∆-Conformity: Multi-scale Node Assortativity in Feature-rich Stream Graphs

Pre-Print: https://arxiv.org/abs/2111.15534

Analysis on Sociopattern datasets:

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