Preference Elicitation

Preference elicitation focuses on efficiently determining user preferences, often in situations with limited information or complex choices, aiming to optimize resource allocation or personalize recommendations. Current research emphasizes developing efficient algorithms, including Bayesian optimization and active learning methods, often integrated with machine learning models like factorization machines or large language models, to minimize user effort and maximize information gain. This field is crucial for improving the effectiveness of recommender systems, interactive decision-making tools, and AI alignment efforts by ensuring that systems accurately reflect and respond to human values and needs.

Papers