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A nonparametric two-sample hypothesis testing problem for random dot product graphs

8 September 2014
M. Tang
A. Athreya
D. Sussman
V. Lyzinski
Carey E. Priebe
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Abstract

We consider the problem of testing whether two finite-dimensional random dot product graphs have generating latent positions that are independently drawn from the same distribution, or distributions that are related via scaling or projection. We propose a test statistic that is a kernel-based function of the adjacency spectral embedding for each graph. We obtain a limiting distribution for our test statistic under the null and we show that our test procedure is consistent across a broad range of alternatives.

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