Litcius/Paper detail

Recommendation for New Users and New Items via Randomized Training and Mixture-of-Experts Transformation

Ziwei Zhu, Shahin Sefati, Parsa Saadatpanah, James Caverlee

202080 citationsDOI

Abstract

The cold start problem is a long-standing challenge in recommender systems. That is, how to recommend for new users and new items without any historical interaction record? Recent ML-based approaches have made promising strides versus traditional methods. These ML approaches typically combine both user-item interaction data of existing warm start users and items (as in CF-based methods) with auxiliary information of users and items such as user profiles and item content information (as in content-based methods). However, such approaches face key drawbacks including the error superimposition issue that the auxiliary-to-CF transformation error increases the final recommendation error; the ineffective learning issue that long distance from transformation functions to model output layer leads to ineffective model learning; and the unified transformation issue that applying the same transformation function for different users and items results in poor transformation.

Topics & Concepts

Computer scienceTransformation (genetics)Recommender systemInformation retrievalKey (lock)Function (biology)Artificial intelligenceData miningMachine learningEvolutionary biologyBiochemistryBiologyGeneChemistryComputer securityRecommender Systems and TechniquesExpert finding and Q&A systemsAdvanced Bandit Algorithms Research
Recommendation for New Users and New Items via Randomized Training and Mixture-of-Experts Transformation | Litcius