Semi-supervised Collaborative Filtering by Text-enhanced Domain Adaptation
Wenhui Yu, Xiao Lin, Junfeng Ge, Wenwu Ou, Zheng Qin
Abstract
Data sparsity is an inherent challenge in the recommender systems, where most of the data is collected from the implicit feedbacks of users. This causes two difficulties in designing effective algorithms: first, the majority of users only have a few interactions with the system and there is no enough data for learning; second, there are no negative samples in the implicit feedbacks and it is a common practice to perform negative sampling to generate negative samples. However, this leads to a consequence that many potential positive samples are mislabeled as negative ones and data sparsity would exacerbate the mislabeling problem.
Topics & Concepts
Computer scienceRecommender systemCollaborative filteringDomain adaptationAdaptation (eye)Machine learningLabeled dataDomain (mathematical analysis)Artificial intelligenceSampling (signal processing)Data miningFilter (signal processing)MathematicsPsychologyMathematical analysisClassifier (UML)Computer visionNeuroscienceRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchText and Document Classification Technologies