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Minh Tanga*, Avanti Athreyaa, Daniel L. Sussmanc, Vince Lyzinskib, Youngser Parkd & Carey E. Priebea

a Department of Applied Mathematics and Statistics, Johns Hopkins University, Baltimore, Maryland

b Johns Hopkins University Human Language Technology Center of Excellence, Baltimore, Maryland

c Department of Mathematics and Statistics, Boston University, Boston, Massachusetts

d Center of Imaging Science, Johns Hopkins University, Baltimore, Maryland

CONTACT Minh Tang Department of Applied Mathematics and Statistics, Johns Hopkins University, Baltimore, MD 21218, USA

Color versions of one or more of the figures in the article can be found online at www.tandfonline.com/r/JCGS.

Supplementary materials for this article are available online. Please go to www.tandfonline.com/r/JCGS.

ABSTRACT

Two-sample hypothesis testing for random graphs arises naturally in neuroscience, social networks, and machine learning. In this article, we consider a semiparametric problem of two-sample hypothesis testing for a class of latent position random graphs. We formulate a notion of consistency in this context and propose a valid test for the hypothesis that two finite-dimensional random dot product graphs on a common vertex set have the same generating latent positions or have generating latent positions that are scaled or diagonal transformations of one another. Our test statistic is a function of a spectral decomposition of the adjacency matrix for each graph and our test procedure is consistent across a broad range of alternatives. We apply our test procedure to real biological data: in a test-retest dataset of neural connectome graphs, we are able to distinguish between scans from different subjects; and in the C. elegans connectome, we are able to distinguish between chemical and electrical networks. The latter example is a concrete demonstration that our test can have power even for small-sample sizes. We conclude by discussing the relationship between our test procedure and generalized likelihood ratio tests. Supplementary materials for this article are available online.

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