Online Learning via Sequential Complexities

Abstract

We consider the problem of sequential prediction and provide tools to study the minimax value of the associated game. Classical statistical learning theory provides several useful complexity measures to study learning with i.i.d. data. Our proposed sequential complexities can be seen as extensions of these measures to the sequential setting. The developed theory is shown to yield precise learning guarantees for the problem of sequential prediction. In particular, we show necessary and sufficient conditions for online learnability in the setting of supervised learning. Several examples show the utility of our framework: we can establish learnability without having to exhibit an explicit online learning algorithm.

Cite

Text

Rakhlin et al. "Online Learning via Sequential Complexities." Journal of Machine Learning Research, 2015.

Markdown

[Rakhlin et al. "Online Learning via Sequential Complexities." Journal of Machine Learning Research, 2015.](https://mlanthology.org/jmlr/2015/rakhlin2015jmlr-online/)

BibTeX

@article{rakhlin2015jmlr-online,
  title     = {{Online Learning via Sequential Complexities}},
  author    = {Rakhlin, Alexander and Sridharan, Karthik and Tewari, Ambuj},
  journal   = {Journal of Machine Learning Research},
  year      = {2015},
  pages     = {155-186},
  volume    = {16},
  url       = {https://mlanthology.org/jmlr/2015/rakhlin2015jmlr-online/}
}