Abstract

Social networks can be organized into communities of closely connected nodes, a property known as modularity. Because diseases, information, and behaviors spread faster within communities than between communities, understanding modularity has broad implications for public policy, epidemiology and the social sciences. Explanations for community formation in social networks often incorporate the attributes of individual people, such as gender, ethnicity or shared activities. High modularity is also a property of large-scale social networks, where each node represents a population of individuals at a location, such as call flow between mobile phone towers. However, whether or not place-based attributes, including land cover and economic activity, can predict community membership for network nodes in large-scale networks remains unknown. We describe the pattern of modularity in a mobile phone communication network in the Dominican Republic, and use a linear discriminant analysis (LDA) to determine whether geographic context can explain community membership. Our results demonstrate that place-based attributes, including sugar cane production, urbanization, distance to the nearest airport, and wealth, correctly predicted community membership for over 70% of mobile phone towers. We observed a strongly positive correlation (r = 0.97) between the modularity score and the predictive ability of the LDA, suggesting that place-based attributes can accurately represent the processes driving modularity. In the absence of social network data, the methods we present can be used to predict community membership over large scales using solely place-based attributes.

Highlights

  • Social networks can be used to model many types of interactions between people, including friendship [1], disease transmission [2], and sexual contact [3]

  • We have demonstrated a close link between community membership and place-based attributes for a large-scale social network of mobile phone communication in the Dominican Republic

  • This link is evident in the high (.70%) predictive capability of a linear discriminant analysis of community membership based on place-based attributes, and the strongly positive correlation between LDA predictive capability and modularity for separate runs of the modularity algorithm

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Summary

Introduction

Social networks can be used to model many types of interactions between people, including friendship [1], disease transmission [2], and sexual contact [3]. Modularity structure results in higher rates of disease spread [2], criminal activity [8], and movement [9], between nodes located in the same community. For networks in which nodes represent individual people, general principles explaining community formation incorporate individual attributes. A challenge remains in translating these general principles for community formation in networks of individual people to large-scale social networks, in which network nodes represent a population of people at a given location. Examples of edges and nodes in these large-scale social networks include human movement between regions, patient transfer between hospitals, and criminal offenses between census tracts [4,8,9]

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