Approximation via Value Unification
Abstract
Abstract: Numerical function approximation over a Boolean domain is a classical problem with wide application to data modeling tasks and various forms of learning. A great many function approximation algorithms have been devised over the years. Because the goal is to produce an approximating function that has low expected error, algorithms are typically guided by error reduction. This guiding force, to reduce error, can bias the algorithm in a detrimental manner. We illustrate this bias, and then propose an alternative approach based on a notion of value unification. 1
Cite
Text
Utgoff and Stracuzzi. "Approximation via Value Unification." International Conference on Machine Learning, 1999.Markdown
[Utgoff and Stracuzzi. "Approximation via Value Unification." International Conference on Machine Learning, 1999.](https://mlanthology.org/icml/1999/utgoff1999icml-approximation/)BibTeX
@inproceedings{utgoff1999icml-approximation,
title = {{Approximation via Value Unification}},
author = {Utgoff, Paul E. and Stracuzzi, David J.},
booktitle = {International Conference on Machine Learning},
year = {1999},
pages = {425-432},
url = {https://mlanthology.org/icml/1999/utgoff1999icml-approximation/}
}