中文

A Statistical Framework for Learning Preferences from the Past

统计方法学 2026-05-12 v1 概率论 应用统计

摘要

In many real-world settings such as online recommendation or consumer choice modeling, individuals make repeated choices from a fixed set of options. Accurately estimating their underlying preferences is essential for generating personalized future recommendations. Probabilistic models for understanding user choice behavior from past decisions can serve as a valuable addition to existing recommender systems and choice prediction methods. To this end, in this article, we introduce a novel statistical framework for predicting user preferences based on their past choices, under a natural monotonicity assumption: options that were chosen more frequently or more intensely in the past are more likely to be chosen again in the future. Our approach builds on a parametric model proposed by Le Goff and Soulier (2017), originally used to describe how ants in an ant colony select a path among many pre-existing paths. We propose a non-parametric generalization of this model, drawing inspiration from the generalized elephant random walk introduced by Maulik et al. (2024). We develop a method of maximum likelihood estimation of the user preference probabilities under the above-mentioned monotonicity constraint. We also derive theoretical guarantees for our estimator and demonstrate the effectiveness of our method through both simulated experiments and real-world datasets.

关键词

引用

@article{arxiv.2605.10042,
  title  = {A Statistical Framework for Learning Preferences from the Past},
  author = {Tamojit Sadhukhan and Moulinath Banerjee and Krishanu Maulik and Parthanil Roy},
  journal= {arXiv preprint arXiv:2605.10042},
  year   = {2026}
}

备注

31 pages, 2 figures