Optimal Sub-sampling with Influence Functions
Machine Learning
2017-09-07 v1 Machine Learning
Abstract
Sub-sampling is a common and often effective method to deal with the computational challenges of large datasets. However, for most statistical models, there is no well-motivated approach for drawing a non-uniform subsample. We show that the concept of an asymptotically linear estimator and the associated influence function leads to optimal sampling procedures for a wide class of popular models. Furthermore, for linear regression models which have well-studied procedures for non-uniform sub-sampling, we show our optimal influence function based method outperforms previous approaches. We empirically show the improved performance of our method on real datasets.
Cite
@article{arxiv.1709.01716,
title = {Optimal Sub-sampling with Influence Functions},
author = {Daniel Ting and Eric Brochu},
journal= {arXiv preprint arXiv:1709.01716},
year = {2017}
}