Entangled Kernels - Beyond Separability

Abstract

We consider the problem of operator-valued kernel learning and investigate the possibility of going beyond the well-known separable kernels. Borrowing tools and concepts from the field of quantum computing, such as partial trace and entanglement, we propose a new view on operator-valued kernels and define a general family of kernels that encompasses previously known operator-valued kernels, including separable and transformable kernels. Within this framework, we introduce another novel class of operator-valued kernels called entangled kernels that are not separable. We propose an efficient two-step algorithm for this framework, where the entangled kernel is learned based on a novel extension of kernel alignment to operator-valued kernels. We illustrate our algorithm with an application to supervised dimensionality reduction, and demonstrate its effectiveness with both artificial and real data for multi-output regression.

Cite

Text

Huusari and Kadri. "Entangled Kernels - Beyond Separability." Journal of Machine Learning Research, 2021.

Markdown

[Huusari and Kadri. "Entangled Kernels - Beyond Separability." Journal of Machine Learning Research, 2021.](https://mlanthology.org/jmlr/2021/huusari2021jmlr-entangled/)

BibTeX

@article{huusari2021jmlr-entangled,
  title     = {{Entangled Kernels - Beyond Separability}},
  author    = {Huusari, Riikka and Kadri, Hachem},
  journal   = {Journal of Machine Learning Research},
  year      = {2021},
  pages     = {1-40},
  volume    = {22},
  url       = {https://mlanthology.org/jmlr/2021/huusari2021jmlr-entangled/}
}