Infinitesimal Annealing for Training Semi-Supervised Support Vector Machines

Abstract

The semi-supervised support vector machine (S3VM) is a maximum-margin classification algorithm based on both labeled and unlabeled data. Training S3VM involves either a combinatorial or non-convex optimization problem and thus finding the global optimal solution is intractable in practice. It has been demonstrated that a key to successfully find a good (local) solution of S3VM is to gradually increase the effect of unlabeled data, a la annealing. However, existing algorithms suffer from the trade-off between the resolution of annealing steps and the computation cost. In this paper, we go beyond this trade-off by proposing a novel training algorithm that efficiently performs annealing with an infinitesimal resolution. Through experiments, we demonstrate that the proposed infinitesimal annealing algorithm tends to produce better solutions with less computation time than existing approaches.

Cite

Text

Ogawa et al. "Infinitesimal Annealing for Training Semi-Supervised Support Vector Machines." International Conference on Machine Learning, 2013.

Markdown

[Ogawa et al. "Infinitesimal Annealing for Training Semi-Supervised Support Vector Machines." International Conference on Machine Learning, 2013.](https://mlanthology.org/icml/2013/ogawa2013icml-infinitesimal/)

BibTeX

@inproceedings{ogawa2013icml-infinitesimal,
  title     = {{Infinitesimal Annealing for Training Semi-Supervised Support Vector Machines}},
  author    = {Ogawa, Kohei and Imamura, Motoki and Takeuchi, Ichiro and Sugiyama, Masashi},
  booktitle = {International Conference on Machine Learning},
  year      = {2013},
  pages     = {897-905},
  volume    = {28},
  url       = {https://mlanthology.org/icml/2013/ogawa2013icml-infinitesimal/}
}