Research Article Open Access

Sparse Partial Optimal Transport via Quadratic Regularization

Khang Tran1, Khoa Nguyen2, Anh Nguyen3, Thong Huynh4, Son Pham5, Sy-Hoang Nguyen-Dang4, Manh Pham6,7, Bang Vo1, Mai Ngoc Tran7, Mai Ngoc Tran8 and Dung Luong9
  • 1 Department of Computer Science, Ho Chi Minh University of Science, Ho Chi Minh City, Vietnam
  • 2 School of Science, Aalto University, Espoo, Finland
  • 3 Department of Science, Lycée Francais Alexandre Yersin de Hanoi, Ha Noi, Vietnam
  • 4 Department of Math, High School for the Gifted, Ho Chi Minh City, Vietnam
  • 5 Department of Electrical and Computer Engineering, University of Massachusetts Amherst, Massachusetts, United States
  • 6 Department of Computer Science, Georgia Institute of Technology, Atlanta, Georgia, United States
  • 7 Acuitas Education, Ho Chi Minh City, Vietnam
  • 8 Department of Computer Science, Binh Duong University, Ho Chi Minh City, Vietnam
  • 9 Department of R&D, VietDynamic, Ho Chi Minh City, Vietnam

Abstract

Partial Optimal Transport (POT) has recently emerged as a central tool in various Machine Learning (ML) applications. It lifts the stringent assumption of the conventional Optimal Transport (OT) that input measures are of equal masses, which is often not guaranteed in real-world datasets, and thus offers greater flexibility by permitting transport between unbalanced input measures. Nevertheless, existing major solvers for POT commonly rely on entropic regularization for acceleration and thus return dense transport plans, hindering the adoption of POT in various applications that favor sparsity. In this paper, as an alternative approach to the entropic POT formulation in the literature, we propose a novel formulation of POT with quadratic regularization, hence termed quadratic regularized POT (QPOT), which induces sparsity to the transport plan and consequently facilitates the adoption of POT in many applications with sparsity requirements. Extensive experiments on synthetic and CIFAR-10 datasets, as well as real-world applications such as color transfer and domain adaptations, consistently demonstrate the improved sparsity and favorable performance of our proposed QPOT formulation.

Journal of Computer Science
Volume 21 No. 7, 2025, 1677-1687

DOI: https://doi.org/10.3844/jcssp.2025.1677.1687

Submitted On: 19 November 2024 Published On: 17 July 2025

How to Cite: Tran, K., Nguyen, K., Nguyen, A., Huynh, T., Pham, S., Nguyen-Dang, S., Pham, M., Vo, B., Tran, M. N. & Luong, D. (2025). Sparse Partial Optimal Transport via Quadratic Regularization. Journal of Computer Science, 21(7), 1677-1687. https://doi.org/10.3844/jcssp.2025.1677.1687

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Keywords

  • Partial Optimal Transport
  • Quadratic Regularizer
  • Optimal Transport