Unbiased Knowledge Distillation for Recommendation
Gang Chen, Jiawei Chen, Fuli Feng, Sheng Zhou, Xiangnan He
Abstract
As a promising solution for model compression, knowledge distillation (KD) has been applied in recommender systems (RS) to reduce inference latency. Traditional solutions first train a full teacher model from the training data, and then transfer its knowledge (\iesoft labels ) to supervise the learning of a compact student model. However, we find such a standard distillation paradigm would incur serious bias issue --- popular items are more heavily recommended after the distillation. This effect prevents the student model from making accurate and fair recommendations, decreasing the effectiveness of RS.
Topics & Concepts
DistillationComputer scienceInferenceRanking (information retrieval)PopularityScheme (mathematics)Code (set theory)Machine learningArtificial intelligenceChromatographyMathematicsChemistryProgramming languagePsychologySocial psychologyMathematical analysisSet (abstract data type)Recommender Systems and TechniquesAdvanced Bandit Algorithms ResearchAdvanced Graph Neural Networks