Two-sample Hypothesis Testing for Inhomogeneous Random Graphs

The study of networks leads to a wide range of high dimensional inference problems. In many practical applications, one needs to draw inference from one or few large sparse networks. The present paper studies hypothesis testing of graphs in this high-dimensional regime, where the goal is to test between two populations of inhomogeneous random graphs defined on the same set of vertices. The size of each population is much smaller than , and can even be a constant as small as 1. The critical question in this context is whether the problem is solvable for small . We answer this question from a minimax testing perspective. Let be the population adjacencies of two sparse inhomogeneous random graph models, and be a suitably defined distance function. Given a population of graphs from each model, we derive minimax separation rates for the problem of testing against . We observe that if is small, then the minimax separation is too large for some popular choices of , including total variation distance between corresponding distributions. This implies that some models that are widely separated in cannot be distinguished for small , and hence, the testing problem is generally not solvable in these cases. We also show that if , then the minimax separation is relatively small if is the Frobenius norm or operator norm distance between and . For , only the latter distance provides small minimax separation. Thus, for these distances, the problem is solvable for small . We also present near-optimal two-sample tests in both cases, where tests are adaptive with respect to sparsity level of the graphs.
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