Top-K Selection Based on Adaptive Sampling of Noisy Preferences
Abstract
We consider the problem of reliably selecting an optimal subset of fixed size from a given set of choice alternatives, based on noisy information about the quality of these alternatives. Problems of similar kind have been tackled by means of adaptive sampling schemes called racing algorithms. However, in contrast to existing approaches, we do not assume that each alternative is characterized by a real-valued random variable, and that samples are taken from the corresponding distributions. Instead, we only assume that alternatives can be compared in terms of pairwise preferences. We propose and formally analyze a general preference-based racing algorithm that we instantiate with three specific ranking procedures and corresponding sampling schemes. Experiments with real and synthetic data are presented to show the efficiency of our approach.
Cite
Text
Busa-Fekete et al. "Top-K Selection Based on Adaptive Sampling of Noisy Preferences." International Conference on Machine Learning, 2013.Markdown
[Busa-Fekete et al. "Top-K Selection Based on Adaptive Sampling of Noisy Preferences." International Conference on Machine Learning, 2013.](https://mlanthology.org/icml/2013/busafekete2013icml-topk/)BibTeX
@inproceedings{busafekete2013icml-topk,
title = {{Top-K Selection Based on Adaptive Sampling of Noisy Preferences}},
author = {Busa-Fekete, Robert and Szorenyi, Balazs and Cheng, Weiwei and Weng, Paul and Huellermeier, Eyke},
booktitle = {International Conference on Machine Learning},
year = {2013},
pages = {1094-1102},
volume = {28},
url = {https://mlanthology.org/icml/2013/busafekete2013icml-topk/}
}