Extending choice assessments to choice functions: An algorithm for computing the natural extension
Artificial Intelligence
2024-12-02 v3 Probability
Abstract
We study how to infer new choices from prior choices using the framework of choice functions, a unifying mathematical framework for decision-making based on sets of preference orders. In particular, we define the natural (most conservative) extension of a given choice assessment to a coherent choice function -- whenever possible -- and use this natural extension to make new choices. We provide a practical algorithm for computing this natural extension and various ways to improve scalability. Finally, we test these algorithms for different types of choice assessments.
Cite
@article{arxiv.2407.21164,
title = {Extending choice assessments to choice functions: An algorithm for computing the natural extension},
author = {Arne Decadt and Alexander Erreygers and Jasper De Bock},
journal= {arXiv preprint arXiv:2407.21164},
year = {2024}
}
Comments
40 pages, 8 figures, pre-print for International Journal of Approximate Reasoning