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Examining the literature on “Networks in Space and in Time.” An introduction

Published online by Cambridge University Press:  09 April 2015

LUCA DE BENEDICTIS
Affiliation:
EIEF and DED, University of Macerata, Italy (e-mail: luca.debenedictis@unimc.it)
MARIA PROSPERINA VITALE
Affiliation:
Department of Economics and Statistics, University of Salerno, Italy (e-mail: mvitale@unisa.it)
STANLEY WASSERMAN
Affiliation:
Departments of Psychology and Statistics, Indiana University, Bloomington, IndianaUSA and Higher School of Economics, National Research University, Moscow, Russia (e-mail: stanwass@indiana.edu)

Abstract

The special issue of “Networks in space and in time: methods and applications” contributes to the debate on contextual analysis in network science. It includes seven research papers that shed light on the analysis of network phenomena studied within geographic space and across temporal dimensions. In these papers, methodological issues as well as specific applications are described from different fields. We take the seven papers, study their citations and texts, and relate them to the broader literature. By exploiting the bibliographic information and the textual data of these seven documents, citation analysis and lexical correspondence analysis allow us to evaluate the connections among the papers included in this issue.

Type
Introduction
Copyright
Copyright © Cambridge University Press 2015 

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