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Constrained Density Estimation via Optimal Transport

Published: January 11, 2026 | arXiv ID: 2601.06830v1

By: Yinan Hu, Estaban Tabak

A novel framework for density estimation under expectation constraints is proposed. The framework minimizes the Wasserstein distance between the estimated density and a prior, subject to the constraints that the expected value of a set of functions adopts or exceeds given values. The framework is generalized to include regularization inequalities to mitigate the artifacts in the target measure. An annealing-like algorithm is developed to address non-smooth constraints, with its effectiveness demonstrated through both synthetic and proof-of-concept real world examples in finance.

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Machine Learning (Stat)