Interactive Preference Learning of Utility Functions for Multi-Objective Optimization
Optimization and Control
2016-12-19 v2
Abstract
Real-world engineering systems are typically compared and contrasted using multiple metrics. For practical machine learning systems, performance tuning is often more nuanced than minimizing a single expected loss objective, and it may be more realistically discussed as a multi-objective optimization problem. We propose a novel generative model for scalar-valued utility functions to capture human preferences in a multi-objective optimization setting. We also outline an interactive active learning system that sequentially refines the understanding of stakeholders ideal utility functions using binary preference queries.
Cite
@article{arxiv.1612.04453,
title = {Interactive Preference Learning of Utility Functions for Multi-Objective Optimization},
author = {Ian Dewancker and Michael McCourt and Samuel Ainsworth},
journal= {arXiv preprint arXiv:1612.04453},
year = {2016}
}
Comments
7 pages of text, 1 page of references, 3 figures, 1 algorithm, 1 table