Importance Sparsification for Sinkhorn Algorithm

JOURNAL OF MACHINE LEARNING RESEARCH(2023)

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摘要
Sinkhorn algorithm has been used pervasively to approximate the solution to optimal trans-port (OT) and unbalanced optimal transport (UOT) problems. However, its practical appli-cation is limited due to the high computational complexity. To alleviate the computational burden, we propose a novel importance sparsification method, called SPAR-SINK, to effi-ciently approximate entropy-regularized OT and UOT solutions. Specifically, our method employs natural upper bounds for unknown optimal transport plans to establish effective sampling probabilities, and constructs a sparse kernel matrix to accelerate Sinkhorn itera-tions, reducing the computational cost of each iteration from O(n2) to Oe(n) for a sample of size n. Theoretically, we show the proposed estimators for the regularized OT and UOT problems are consistent under mild regularity conditions. Experiments on various syn-thetic data demonstrate SPAR-SINK outperforms mainstream competitors in terms of both estimation error and speed. A real-world echocardiogram data analysis shows SPAR-SINK can effectively estimate and visualize cardiac cycles, from which one can identify heart failure and arrhythmia. To evaluate the numerical accuracy of cardiac cycle prediction, we consider the task of predicting the end-systole time point using the end-diastole one. Results show SPAR-SINK performs as well as the classical Sinkhorn algorithm, requiring significantly less computational time.
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关键词
echocardiogram analysis,element-wise sampling,importance sampling,(un-balanced) optimal transport,Wasserstein-Fisher-Rao distance
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