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A Unified Framework for Implicit Sinkhorn Differentiation

Authors :
Eisenberger, Marvin
Toker, Aysim
Leal-Taixé, Laura
Bernard, Florian
Cremers, Daniel
Publication Year :
2022

Abstract

The Sinkhorn operator has recently experienced a surge of popularity in computer vision and related fields. One major reason is its ease of integration into deep learning frameworks. To allow for an efficient training of respective neural networks, we propose an algorithm that obtains analytical gradients of a Sinkhorn layer via implicit differentiation. In comparison to prior work, our framework is based on the most general formulation of the Sinkhorn operator. It allows for any type of loss function, while both the target capacities and cost matrices are differentiated jointly. We further construct error bounds of the resulting algorithm for approximate inputs. Finally, we demonstrate that for a number of applications, simply replacing automatic differentiation with our algorithm directly improves the stability and accuracy of the obtained gradients. Moreover, we show that it is computationally more efficient, particularly when resources like GPU memory are scarce.<br />Comment: To appear at CVPR 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.06688
Document Type :
Working Paper