Online Active Linear Regression via Thresholding
Abstract
We consider the problem of online active learning to collect data for regression modeling. Specifically, we consider a decision maker with a limited experimentation budget who must efficiently learn an underlying linear population model. Our main contribution is a novel threshold-based algorithm for selection of most informative observations; we characterize its performance and fundamental lower bounds. We extend the algorithm and its guarantees to sparse linear regression in high-dimensional settings. Simulations suggest the algorithm is remarkably robust: it provides significant benefits over passive random sampling in real-world datasets that exhibit high nonlinearity and high dimensionality --- significantly reducing both the mean and variance of the squared error.
Cite
@article{arxiv.1602.02845,
title = {Online Active Linear Regression via Thresholding},
author = {Carlos Riquelme and Ramesh Johari and Baosen Zhang},
journal= {arXiv preprint arXiv:1602.02845},
year = {2016}
}
Comments
Published in AAAI 2017