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arxiv: 1306.0895 · v1 · pith:DX2ROIB7new · submitted 2013-06-04 · 📊 stat.ML

Sinkhorn Distances: Lightspeed Computation of Optimal Transportation Distances

classification 📊 stat.ML
keywords transportationdistancesoptimalclassicalcomputationfamilyhistogramsperformance
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Optimal transportation distances are a fundamental family of parameterized distances for histograms. Despite their appealing theoretical properties, excellent performance in retrieval tasks and intuitive formulation, their computation involves the resolution of a linear program whose cost is prohibitive whenever the histograms' dimension exceeds a few hundreds. We propose in this work a new family of optimal transportation distances that look at transportation problems from a maximum-entropy perspective. We smooth the classical optimal transportation problem with an entropic regularization term, and show that the resulting optimum is also a distance which can be computed through Sinkhorn-Knopp's matrix scaling algorithm at a speed that is several orders of magnitude faster than that of transportation solvers. We also report improved performance over classical optimal transportation distances on the MNIST benchmark problem.

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