Co-adaptive learning over a countable space
Abstract
Co-adaptation is a special form of on-line learning where an algorithm must assist an unknown algorithm to perform some task. This is a general framework and has applications in recommendation systems, search, education, and much more. Today, the most common use of co-adaptive algorithms is in brain-computer interfacing (BCI), where algorithms help patients gain and maintain control over prosthetic devices. While previous studies have shown strong empirical results Kowalski et al. (2013); Orsborn et al. (2014) or have been studied in specific examples Merel et al. (2013, 2015), there is no general analysis of the co-adaptive learning problem. Here we will study the co-adaptive learning problem in the online, closed-loop setting. We will prove that, with high probability, co-adaptive learning is guaranteed to outperform learning with a fixed decoder as long as a particular condition is met.
Cite
@article{arxiv.1611.09816,
title = {Co-adaptive learning over a countable space},
author = {Michael Rabadi},
journal= {arXiv preprint arXiv:1611.09816},
year = {2016}
}
Comments
6 pages, 1 figure, NIPS 2016 Time Series Workshop