Feature-based Uncertainty Model for School Choice
Abstract
In this work, we consider a school choice scenario where a student does not exactly know which college is better for her. Although it is hard for a student to obtain an exact preference, she can usually compare specific features of colleges, such as reputation, location, and campus facilities. Motivated by this, we propose a feature-based uncertainty model for school choice where a student's preference is based on a linear combination of her utilities over different features, and the coefficients of the combination are treated as random variables. Our main goal is to achieve a higher probability of stability (ProS) and incentive compatibility (IC) for students. Unfortunately, these two goals are incompatible in general. We show that a student-proposing deferred acceptance (DA) that prioritizes colleges with higher expected ranking can achieve a worst-case approximation ratio of on ProS, while a DA with a carefully defined iterated comparison vector can guarantee the strongest achievable form of IC. Finally, we provide additional results for some specific restrictions on the model.
Cite
@article{arxiv.2602.12615,
title = {Feature-based Uncertainty Model for School Choice},
author = {Yao Zhang and Makoto Yokoo},
journal= {arXiv preprint arXiv:2602.12615},
year = {2026}
}
Comments
Full version for the paper with the same title at AAMAS 2026