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Mitigating Popularity Bias in Recommender Systems
Exploring bias mitigation strategies in recommender systems, the chapter discusses re-ranking as a post-processing step to address popularity bias and skewness in data. It covers methods such as de-biasing data, under sampling popular interactions, re-weighting strategies, and adjusting collaborative filtering algorithms. The conversation also touches on the use of regularizers and challenges in real-time processing for improving recommendations.