IRNov 3, 2019

The Relationship between the Consistency of Users' Ratings and Recommendation Calibration

arXiv:1911.00852v12 citations
Originality Synthesis-oriented
AI Analysis

This work addresses fairness in recommender systems by identifying rating consistency as a factor impacting calibration, which is incremental as it builds on existing fairness research.

The paper investigates how the consistency of users' ratings affects the calibration of recommendations in recommender systems, finding a positive correlation where users with more inconsistent ratings receive less calibrated recommendations.

Fairness in recommender systems has recently received attention from researchers. Unfair recommendations have negative impact on the effectiveness of recommender systems as it may degrade users' satisfaction, loyalty, and at worst, it can lead to or perpetuate undesirable social dynamics. One of the factors that may impact fairness is calibration, the degree to which users' preferences on various item categories are reflected in the recommendations they receive. The ability of a recommendation algorithm for generating effective recommendations may depend on the meaningfulness of the input data and the amount of information available in users' profile. In this paper, we aim to explore the relationship between the consistency of users' ratings behavior and the degree of calibrated recommendations they receive. We conduct our analysis on different groups of users based on the consistency of their ratings. Our experimental results on a movie dataset and several recommendation algorithms show that there is a positive correlation between the consistency of users' ratings behavior and the degree of calibration in their recommendations, meaning that user groups with higher inconsistency in their ratings receive less calibrated recommendations.

Foundations

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

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