Litcius/Paper detail

Adaptive Multi-Teacher Knowledge Distillation with Meta-Learning

Hailin Zhang, Defang Chen, Can Wang

202327 citationsDOI

Abstract

Multi-Teacher knowledge distillation provides students with additional supervision from multiple pre-trained teachers with diverse information sources. Most existing methods explore different weighting strategies to obtain a powerful ensemble teacher, while ignoring the student with poor learning ability may not benefit from such specialized integrated knowledge. To address this problem, we propose Adaptive Multi-teacher Knowledge Distillation with Meta-Learning (MMKD) to supervise student with appropriate knowledge from a tailored ensemble teacher. With the help of a meta-weight network, the diverse yet compatible teacher knowledge in the output layer and intermediate layers is jointly leveraged to enhance the student performance. Extensive experiments on multiple benchmark datasets validate the effectiveness and flexibility of our methods. Code is available: https://github.com/Rorozhl/MMKD.

Topics & Concepts

WeightingComputer scienceBenchmark (surveying)Flexibility (engineering)Meta learning (computer science)Machine learningDistillationCode (set theory)Artificial intelligenceLayer (electronics)Ensemble learningStatisticsMathematicsMedicineProgramming languageOrganic chemistryTask (project management)GeodesySet (abstract data type)ManagementRadiologyChemistryGeographyEconomicsDomain Adaptation and Few-Shot LearningMachine Learning and Data ClassificationEducational Technology and Assessment
Adaptive Multi-Teacher Knowledge Distillation with Meta-Learning | Litcius