IRAILGOct 15, 2021

Revisiting Popularity and Demographic Biases in Recommender Evaluation and Effectiveness

arXiv:2110.08353v134 citations
Originality Synthesis-oriented
AI Analysis

This work highlights fairness issues in recommender systems for marginalized or underrepresented demographic groups, but it is incremental as it builds on existing research.

The study reproduced and extended prior findings on popularity and demographic biases in recommender systems, showing statistically significant performance differences by age, gender, and country representation, with utility degrading for older users and being lower for women than men.

Recommendation algorithms are susceptible to popularity bias: a tendency to recommend popular items even when they fail to meet user needs. A related issue is that the recommendation quality can vary by demographic groups. Marginalized groups or groups that are under-represented in the training data may receive less relevant recommendations from these algorithms compared to others. In a recent study, Ekstrand et al. investigate how recommender performance varies according to popularity and demographics, and find statistically significant differences in recommendation utility between binary genders on two datasets, and significant effects based on age on one dataset. Here we reproduce those results and extend them with additional analyses. We find statistically significant differences in recommender performance by both age and gender. We observe that recommendation utility steadily degrades for older users, and is lower for women than men. We also find that the utility is higher for users from countries with more representation in the dataset. In addition, we find that total usage and the popularity of consumed content are strong predictors of recommender performance and also vary significantly across demographic groups.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes