
Recsperts - Recommender Systems Experts #19: Popularity Bias in Recommender Systems with Himan Abdollahpouri
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Oct 12, 2023 Himan Abdollahpouri, Applied Research Scientist at Spotify, delves into popularity bias in recommender systems. Topics include unfair recommendations for stakeholders, challenges in music and podcast streaming personalization, and strategies to counteract popularity bias. Learn about debiasing data, models, and outputs, as well as the relationship between multi-objective and multi-stakeholder recommender systems.
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How Himan Entered Recommender Research
- Himan switched from genetics to recommender systems after his master's supervisor suggested the field.
- He pursued a PhD to work with Robin Burke and stayed in recommender research throughout his career.
Tune Candidate Pool Size Pragmatically
- Treat reranking pool size as a tunable hyperparameter and test offline to pick a cost-effective number.
- Use batch generation and caching for heavy reranking to avoid real-time computational costs when possible.
Content Features Reduce Popularity Reliance
- Rich item and user content features reduce reliance on interaction popularity and help surface relevant niche items.
- Hybrid models that use content/context can both improve accuracy and mitigate popularity amplification.
