Predicting affinity ties in a surname network.

Journal: PloS one
PMID:

Abstract

From administrative registers of last names in Santiago, Chile, we create a surname affinity network that encodes socioeconomic data. This network is a multi-relational graph with nodes representing surnames and edges representing the prevalence of interactions between surnames by socioeconomic decile. We model the prediction of links as a knowledge base completion problem, and find that sharing neighbors is highly predictive of the formation of new links. Importantly, We distinguish between grounded neighbors and neighbors in the embedding space, and find that the latter is more predictive of tie formation. The paper discusses the implications of this finding in explaining the high levels of elite endogamy in Santiago.

Authors

  • Marcelo Mendoza
    Department of Computer Science, School of Engineering, Pontificia Universidad Católica de Chile, Vicuña Mackenna 6840, 7820436, Santiago, RM, Chile.
  • Naim Bro
    Millennium Institute of Foundational Research on Data, Santiago, Chile.