Towards Simulation-Based Evaluation of Recommender Systems with Carousel Interfaces
Behnam Rahdari, Peter Brusilovsky, Branislav Kveton
Abstract
Offline data-driven evaluation is considered a low-cost and more accessible alternative to the online empirical method of assessing the quality of recommender systems. Despite their popularity and effectiveness, most data-driven approaches are unsuitable for evaluating interactive recommender systems. In this article, we attempt to address this issue by simulating the user interactions with the system as a part of the evaluation process. Particularly, we demonstrate that simulated users find their desired item more efficiently when recommendations are presented as a list of carousels compared to a simple ranked list.
Topics & Concepts
Recommender systemComputer scienceHuman–computer interactionWorld Wide WebRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchConsumer Market Behavior and Pricing