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A Machine Learning Framework for Geodesics Under Spherical Wasserstein–Fisher–Rao Metric and Its Application for Weighted Sample Generation

Publication ,  Journal Article
Jing, Y; Chen, J; Li, L; Lu, J
Published in: Journal of Scientific Computing
January 1, 2024

Wasserstein–Fisher–Rao (WFR) distance is a family of metrics to gauge the discrepancy of two Radon measures, which takes into account both transportation and weight change. Spherical WFR distance is a projected version of WFR distance for probability measures so that the space of Radon measures equipped with WFR can be viewed as metric cone over the space of probability measures with spherical WFR. Compared to the case for Wasserstein distance, the understanding of geodesics under the spherical WFR is less clear and still an ongoing research focus. In this paper, we develop a deep learning framework to compute the geodesics under the spherical WFR metric, and the learned geodesics can be adopted to generate weighted samples. Our approach is based on a Benamou–Brenier type dynamic formulation for spherical WFR. To overcome the difficulty in enforcing the boundary constraint brought by the weight change, a Kullback–Leibler divergence term based on the inverse map is introduced into the cost function. Moreover, a new regularization term using the particle velocity is introduced as a substitute for the Hamilton–Jacobi equation for the potential in dynamic formula. When used for sample generation, our framework can be beneficial for applications with given weighted samples, especially in the Bayesian inference, compared to sample generation with previous flow models.

Duke Scholars

Published In

Journal of Scientific Computing

DOI

EISSN

1573-7691

ISSN

0885-7474

Publication Date

January 1, 2024

Volume

98

Issue

1

Related Subject Headings

  • Applied Mathematics
  • 4903 Numerical and computational mathematics
  • 4901 Applied mathematics
  • 0802 Computation Theory and Mathematics
  • 0103 Numerical and Computational Mathematics
  • 0102 Applied Mathematics
 

Citation

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Jing, Y., Chen, J., Li, L., & Lu, J. (2024). A Machine Learning Framework for Geodesics Under Spherical Wasserstein–Fisher–Rao Metric and Its Application for Weighted Sample Generation. Journal of Scientific Computing, 98(1). https://doi.org/10.1007/s10915-023-02396-y
Jing, Y., J. Chen, L. Li, and J. Lu. “A Machine Learning Framework for Geodesics Under Spherical Wasserstein–Fisher–Rao Metric and Its Application for Weighted Sample Generation.” Journal of Scientific Computing 98, no. 1 (January 1, 2024). https://doi.org/10.1007/s10915-023-02396-y.
Jing, Y., et al. “A Machine Learning Framework for Geodesics Under Spherical Wasserstein–Fisher–Rao Metric and Its Application for Weighted Sample Generation.” Journal of Scientific Computing, vol. 98, no. 1, Jan. 2024. Scopus, doi:10.1007/s10915-023-02396-y.
Journal cover image

Published In

Journal of Scientific Computing

DOI

EISSN

1573-7691

ISSN

0885-7474

Publication Date

January 1, 2024

Volume

98

Issue

1

Related Subject Headings

  • Applied Mathematics
  • 4903 Numerical and computational mathematics
  • 4901 Applied mathematics
  • 0802 Computation Theory and Mathematics
  • 0103 Numerical and Computational Mathematics
  • 0102 Applied Mathematics