Hoeffding Races: Accelerating Model Selection Search for Classification and Function Approximation - Robotics Institute Carnegie Mellon University

Hoeffding Races: Accelerating Model Selection Search for Classification and Function Approximation

O. Maron and Andrew Moore
Conference Paper, Proceedings of (NeurIPS) Neural Information Processing Systems, pp. 59 - 66, November, 1993

Abstract

Selecting a good model of a set of input points by cross validation is a computationally intensive process, especially if the number of possible models or the number of training points is high. Techniques such as gradient descent are helpful in searching through the space of models, but problems such as local minima, and more importantly, lack of a distance metric between various models reduce the applicability of these search methods. Hoeffding Races is a technique for finding a good model for the data by quickly discarding bad models, and concentrating the computational effort at differentiating between the better ones. This paper focuses on the special case of leave-one-out cross validation applied to memory-based learning algorithms, but we also argue that it is applicable to any class of model selection problems.

BibTeX

@conference{Maron-1993-15969,
author = {O. Maron and Andrew Moore},
title = {Hoeffding Races: Accelerating Model Selection Search for Classification and Function Approximation},
booktitle = {Proceedings of (NeurIPS) Neural Information Processing Systems},
year = {1993},
month = {November},
pages = {59 - 66},
publisher = {Morgan Kaufmann},
}