interestdisambiguation
Interestdisambiguation is the process of resolving ambiguities in user interest data when a single label can refer to multiple possible entities, concepts, or topics. It sits at the intersection of disambiguation, entity linking, and user modeling, and is used to map ambiguous interests to canonical representations in a knowledge base or taxonomy. The goal is to improve accuracy in downstream tasks such as recommendations, search personalization, and targeted advertising by ensuring that a user’s interests are correctly identified.
In practice, interestdisambiguation involves generating candidate interpretations for an ambiguous interest, collecting contextual signals (from the
Key challenges include short or noisy input, multilingual or domain-specific terminology, evolving interests, and privacy constraints
Applications of interestdisambiguation appear in recommender systems, personalized search, social platforms, and advertising ecosystems. It is