Unbiased Cascade Bandits: Mitigating Exposure Bias in Online Learning to Rank Recommendation
Masoud Mansoury, Himan Abdollahpouri, Bamshad Mobasher, Mykola, Pechenizkiy, Robin Burke, Milad Sabouri

TL;DR
This paper investigates exposure bias in online bandit-based recommendation systems, analyzes the fairness shortcomings of Linear Cascade Bandits, and proposes a discounting method to improve exposure fairness based on experimental validation.
Contribution
It introduces a novel discounting factor to mitigate exposure bias in Linear Cascade Bandits, enhancing fairness in recommendation outcomes.
Findings
The analyzed bandit algorithms fail to ensure fair item and supplier exposure.
The proposed discounting method effectively improves exposure fairness.
Experimental results demonstrate the method's success across multiple datasets.
Abstract
Exposure bias is a well-known issue in recommender systems where items and suppliers are not equally represented in the recommendation results. This is especially problematic when bias is amplified over time as a few popular items are repeatedly over-represented in recommendation lists. This phenomenon can be viewed as a recommendation feedback loop: the system repeatedly recommends certain items at different time points and interactions of users with those items will amplify bias towards those items over time. This issue has been extensively studied in the literature on model-based or neighborhood-based recommendation algorithms, but less work has been done on online recommendation models such as those based on multi-armed Bandit algorithms. In this paper, we study exposure bias in a class of well-known bandit algorithms known as Linear Cascade Bandits. We analyze these algorithms on…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Recommender Systems and Techniques · Smart Grid Energy Management
