Entropic Proximal Gradient Method for Generalized Optimal Transport Problems
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Date
2024-08-12
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Abstract
Optimal transport, a fundamental problem in applied mathematics, involves finding
the most efficient way to move mass from multiple sources to multiple destinations.
Previously known approaches employ entropic regularization combined with
the Sinkhorn iterations, a technique known for its efficiency in solving large-scale
optimal transport problems. This thesis presents a new method for solving generalized
optimal transport problems using the entropic proximal gradient method. The
method breaks down the complex problem into a sequence of standard optimal transport
problems, solved by the Sinkhorn iterations. We provide theoretical foundations,
including proof of convergence and termination criteria, along with a detailed
implementation and numerical experiments showing the algorithm’s applicability.
The results of this thesis may offer improvements in computational performance for
generalized optimal transport problems, making it a valuable tool for applications
in economics, machine learning, and other fields where optimal transport is utilized.
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generalized multi-marginal optimal transport, Sinkhorn iterations, entropic regularization, proximal gradient, optimization, graph-structure, log-sum-exp