Active Learning for Identifying Function Threshold Boundaries
Conference Paper, Proceedings of (NeurIPS) Neural Information Processing Systems, pp. 163 - 170, December, 2005
Abstract
We present an efficient algorithm to actively select queries for learning the boundaries separating a function domain into regions where the function is above and below a given threshold. We develop experiment selection methods based on entropy, misclassification rate, variance, and their combinations, and show how they perform on a number of data sets. We then show how these algorithms are used to determine simultaneously valid 1 - α confidence intervals for seven cosmological parameters. Experimentation shows that the algorithm reduces the computation necessary for the parameter estimation problem by an order of magnitude.
BibTeX
@conference{Bryan-2005-119826,author = {B. Bryan and L. Wasserman and J. Schneider and R. Nichol and C. Miller and C. Genovese},
title = {Active Learning for Identifying Function Threshold Boundaries},
booktitle = {Proceedings of (NeurIPS) Neural Information Processing Systems},
year = {2005},
month = {December},
pages = {163 - 170},
}
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