IEEE Access (Jan 2021)

Multi-View Representation Learning via Dual Optimal Transportation

  • Peng Li,
  • Jing Gao,
  • Bin Zhai,
  • Jianing Zhang,
  • Zhikui Chen

DOI
https://doi.org/10.1109/ACCESS.2021.3123078
Journal volume & issue
Vol. 9
pp. 144976 – 144984

Abstract

Read online

Recently, multi-view representation learning has gained rapid growth in various fields. Most of previous multi-view learning methods rely on strong notions of distances that often provide no useful gradients in deep network training, which greatly degrades the performance in merging complementary information of views. To address this challenge, a multi-view representation learning network with dual optimal transportation (MDOT-Net) is proposed to capture fusion representations embedded in a common manifold with the weak topology. In MDOT-Net, the multi-view representation learning is modelled as an optimal transportation (OT) problem in manifold fitting, which is further decomposed into the intra-view OT and the inter-view OT. The intra-view OT is implemented by a view-specific adversarial variational network, which accurately captures local manifold structures within views by leveraging fusion knowledge. The inter-view OT is implemented by a view-fusion adversarial inference network, which models fusion representations compatible with diversities of sub-manifolds by utilizing view-specific knowledge. The two OTs boost mutually by providing prior knowledge to each other in multi-view representation learning. Finally, numerous experiments are conducted on four benchmark datasets, and the results demonstrate MDOT-Net is competitive against state-of-the-art algorithms.

Keywords