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📄 Abstract
Abstract: We statistically analyze empirical plug-in estimators for unbalanced optimal
transport (UOT) formalisms, focusing on the Kantorovich-Rubinstein distance,
between general intensity measures based on observations from spatio-temporal
point processes. Specifically, we model the observations by two weakly
time-stationary point processes with spatial intensity measures $\mu$ and $\nu$
over the expanding window $(0,t]$ as $t$ increases to infinity, and establish
sharp convergence rates of the empirical UOT in terms of the intrinsic
dimensions of the measures. We assume a sub-quadratic temporal growth condition
of the variance of the process, which allows for a wide range of temporal
dependencies. As the growth approaches quadratic, the convergence rate becomes
slower. This variance assumption is related to the time-reduced factorial
covariance measure, and we exemplify its validity for various point processes,
including the Poisson cluster, Hawkes, Neyman-Scott, and log-Gaussian Cox
processes. Complementary to our upper bounds, we also derive matching lower
bounds for various spatio-temporal point processes of interest and establish
near minimax rate optimality of the empirical Kantorovich-Rubinstein distance.