Learning from Samples: Inverse Problems over measures via Sharpened Fenchel-Young Losses
Journal:
arXiv
Published Date:
May 11, 2025
Abstract
Estimating parameters from samples of an optimal probability distribution is
essential in applications ranging from socio-economic modeling to biological
system analysis. In these settings, the probability distribution arises as the
solution to an optimization problem that captures either static interactions
among agents or the dynamic evolution of a system over time. Our approach
relies on minimizing a new class of loss functions, called sharpened
Fenchel-Young losses, which measure the sub-optimality gap of the optimization
problem over the space of measures. We study the stability of this estimation
method when only a finite number of sample is available. The parameters to be
estimated typically correspond to a cost function in static problems and to a
potential function in dynamic problems. To analyze stability, we introduce a
general methodology that leverages the strong convexity of the loss function
together with the sample complexity of the forward optimization problem. Our
analysis emphasizes two specific settings in the context of optimal transport,
where our method provides explicit stability guarantees: The first is inverse
unbalanced optimal transport (iUOT) with entropic regularization, where the
parameters to estimate are cost functions that govern transport computations;
this method has applications such as link prediction in machine learning. The
second is inverse gradient flow (iJKO), where the objective is to recover a
potential function that drives the evolution of a probability distribution via
the Jordan-Kinderlehrer-Otto (JKO) time-discretization scheme; this is
particularly relevant for understanding cell population dynamics in single-cell
genomics. Finally, we validate our approach through numerical experiments on
Gaussian distributions, where closed-form solutions are available, to
demonstrate the practical performance of our methods