Article(electronic)June 2013

Hypothesis Testing for Group Structure in Legislative Networks

In: State politics & policy quarterly: the official journal of the State Politics and Policy section of the American Political Science Association, Volume 13, Issue 2, p. 225-243

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Abstract

AbstractScholars of social networks often rely on summary statistics to measure and compare the structures of their networks of interest. However, measuring the uncertainty inherent in these summaries can be challenging, thus making hypothesis testing for network summaries difficult. Computational and nonparametric procedures can overcome these difficulties by allowing researchers to generate reference distributions for comparison directly from their data. In this research, I demonstrate the use of nonparametric hypothesis testing in networks using the popular network summary statistic network modularity. I provide a method based on permutation testing for assessing whether a particular network modularity score is larger than a researcher might expect due to random chance. I then create a simulation study of network modularity and its simulated reference distribution that I propose. Finally, I provide an empirical example of this technique using cosponsorship networks from U.S. state legislatures.

Languages

English

Publisher

Cambridge University Press (CUP)

ISSN: 1946-1607

DOI

10.1177/1532440012473842

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