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Rethinking Selective Knowledge Distillation

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Growing efforts to improve knowledge distillation (KD) in large language models (LLMs) replace dense teacher supervision with selective distillation, which uses a subset of token positions, vocabulary classes, or training samples for supervision. However, it remains unclear which importance signals, selection policies, and their interplay are most effective. In this work, we revisit where and how to distill in autoregressive LLMs. We disentangle selective KD along the position, class, and sample axes and systematically compare importance signals and selection policies. Then, guided by this analysis, we identify underexplored opportunities and introduce student-entropy-guided position selection (SE-KD). Across a suite of benchmarks, SE-KD often improves accuracy, downstream task adherence, and memory efficiency over dense distillation. Extending this approach across the class and sample axes (SE-KD 3X) yields complementary efficiency gains that make offline teacher caching feasible. In practice, this reduces wall time by 70% and peak memory by 18%, while cutting storage usage by 80% over prior methods without sacrificing performance.

Almog Tavor, Itay Ebenspanger, Neil Cnaan, Mor Geva• 2026

Related benchmarks

TaskDatasetResultRank
Language ModelingLAMBADA
Perplexity8
99
Language ModelingLAMBADA (test)--
71
Instruction FollowingIFEval (test)
IFEval Score22
45
General PerformanceGeneral Evaluation Suite
Accuracy64
17
General Knowledge EvaluationGeneral-purpose benchmarks average (test)
Accuracy64.8
12
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