How do you ensure transparency and explainability of recommender systems to users and stakeholders?
Recommender systems are algorithms that suggest products, services, or content to users based on their preferences, behavior, or context. They are widely used by online platforms such as e-commerce, streaming, social media, and news sites to enhance user experience, engagement, and loyalty. However, recommender systems also pose ethical and social challenges, such as privacy, fairness, diversity, accountability, and trust. How do you ensure transparency and explainability of recommender systems to users and stakeholders? Here are some best practices and tips to consider.