English

Towards Psychologically-Grounded Dynamic Preference Models

Information Retrieval 2022-08-09 v2 Artificial Intelligence Human-Computer Interaction

Abstract

Designing recommendation systems that serve content aligned with time varying preferences requires proper accounting of the feedback effects of recommendations on human behavior and psychological condition. We argue that modeling the influence of recommendations on people's preferences must be grounded in psychologically plausible models. We contribute a methodology for developing grounded dynamic preference models. We demonstrate this method with models that capture three classic effects from the psychology literature: Mere-Exposure, Operant Conditioning, and Hedonic Adaptation. We conduct simulation-based studies to show that the psychological models manifest distinct behaviors that can inform system design. Our study has two direct implications for dynamic user modeling in recommendation systems. First, the methodology we outline is broadly applicable for psychologically grounding dynamic preference models. It allows us to critique recent contributions based on their limited discussion of psychological foundation and their implausible predictions. Second, we discuss implications of dynamic preference models for recommendation systems evaluation and design. In an example, we show that engagement and diversity metrics may be unable to capture desirable recommendation system performance.

Keywords

Cite

@article{arxiv.2208.01534,
  title  = {Towards Psychologically-Grounded Dynamic Preference Models},
  author = {Mihaela Curmei and Andreas Haupt and Dylan Hadfield-Menell and Benjamin Recht},
  journal= {arXiv preprint arXiv:2208.01534},
  year   = {2022}
}

Comments

In Sixteenth ACM Conference on Recommender Systems, September 18-23, 2022, Seattle, WA, USA, 14 pages

R2 v1 2026-06-25T01:25:07.024Z