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A Fast and Robust Method for Global Topological Functional Optimization

Publication ,  Conference
Solomon, E; Wagner, A; Bendich, P
Published in: Proceedings of Machine Learning Research
January 1, 2021

Topological statistics, in the form of persistence diagrams, are a class of shape descriptors that capture global structural information in data. The mapping from data structures to persistence diagrams is almost everywhere differentiable, allowing for topological gradients to be backpropagated to ordinary gradients. However, as a method for optimizing a topological functional, this backpropagation method is expensive, unstable, and produces very fragile optima. Our contribution is to introduce a novel backpropagation scheme that is significantly faster, more stable, and produces more robust optima. Moreover, this scheme can also be used to produce a stable visualization of dots in a persistence diagram as a distribution over critical, and near-critical, simplices in the data structure.

Duke Scholars

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2021

Volume

130

Start / End Page

109 / 117
 

Citation

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Solomon, E., Wagner, A., & Bendich, P. (2021). A Fast and Robust Method for Global Topological Functional Optimization. In Proceedings of Machine Learning Research (Vol. 130, pp. 109–117).
Solomon, E., A. Wagner, and P. Bendich. “A Fast and Robust Method for Global Topological Functional Optimization.” In Proceedings of Machine Learning Research, 130:109–17, 2021.
Solomon E, Wagner A, Bendich P. A Fast and Robust Method for Global Topological Functional Optimization. In: Proceedings of Machine Learning Research. 2021. p. 109–17.
Solomon, E., et al. “A Fast and Robust Method for Global Topological Functional Optimization.” Proceedings of Machine Learning Research, vol. 130, 2021, pp. 109–17.
Solomon E, Wagner A, Bendich P. A Fast and Robust Method for Global Topological Functional Optimization. Proceedings of Machine Learning Research. 2021. p. 109–117.

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2021

Volume

130

Start / End Page

109 / 117