This paper explores the problem of selection bias in the preference elicitation (PE) stage of recommendation systems. The authors note that while selection bias in user interactions (e.g., ratings) has been widely studied, the effects of bias in the PE stage have not been investigated.
The authors first discuss how common debiasing methods for item recommendation, such as inverse propensity scoring (IPS), can be applied to the PE stage. They then introduce a method for simulating a PE stage from static recommendation datasets, as there is currently no publicly available dataset that represents PE interactions.
Through experiments on both a semi-synthetic dataset (based on the Yahoo! R3 dataset) and a fully-synthetic dataset, the authors demonstrate that:
The authors propose their simulation method and initial results as a starting point and motivation for future research into this important but overlooked problem setting.
Para Outro Idioma
do conteúdo original
arxiv.org
Principais Insights Extraídos De
by Shashank Gup... às arxiv.org 05-02-2024
https://arxiv.org/pdf/2405.00554.pdfPerguntas Mais Profundas