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Why Skip If You Can Combine: A Simple Knowledge Distillation Technique for Intermediate Layers

Yimeng Wu, Peyman Passban, Mehdi Rezagholizadeh, Qun Liu

202031 citationsDOIOpen Access PDF

Abstract

With the growth of computing power neural machine translation (NMT) models also grow accordingly and become better. However, they also become harder to deploy on edge devices due to memory constraints. To cope with this problem, a common practice is to distill knowledge from a large and accurately-trained teacher network (T ) into a compact student network (S). Although knowledge distillation (KD) is useful in most cases, our study shows that existing KD techniques might not be suitable enough for deep NMT engines, so we propose a novel alternative. In our model, besides matching T and S predictions we have a combinatorial mechanism to inject layer-level supervision from T to S. In this paper, we target low-resource settings and evaluate our translation engines for PortugueseEnglish, TurkishEnglish, and EnglishGerman directions. Students trained using our technique have 50% fewer parameters and can still deliver comparable results to those of 12-layer teachers.

Topics & Concepts

Computer scienceDistillationArtificial intelligenceSimple (philosophy)Layer (electronics)Artificial neural networkMachine translationMatching (statistics)Machine learningEnhanced Data Rates for GSM EvolutionGermanEdge deviceTranslation (biology)Natural language processingOperating systemBiochemistryHistoryPhilosophyChemistryArchaeologyStatisticsEpistemologyCloud computingGeneMessenger RNAOrganic chemistryMathematicsNatural Language Processing TechniquesTopic ModelingMultimodal Machine Learning Applications
Why Skip If You Can Combine: A Simple Knowledge Distillation Technique for Intermediate Layers | Litcius