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Main Authors: Li, Baiang, Chai, Wenhao, Heide, Felix
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.15451
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author Li, Baiang
Chai, Wenhao
Heide, Felix
author_facet Li, Baiang
Chai, Wenhao
Heide, Felix
contents Large-scale visual learning is increasingly limited by training cost. Existing knowledge distillation methods transfer from a stronger teacher to a weaker student for compression or final-accuracy improvement. We instead investigate distillation to accelerate the training of strong students. We propose a generalizable plug-and-play recipe that freezes a weaker teacher, applies distillation only in early training, and turns it off once the student reaches and surpasses teacher-level performance. For ImageNet and CIFAR classification, this strategy reaches target thresholds much earlier, with up to 4.8 times speedup measured by epochs. We confirm that the method generalizes to other tasks and report 1.7 times epoch speedup for object detection on the COCO dataset, and 2.5 times earlier target-FID crossing for diffusion generation on the CIFAR-10 dataset, measured in steps. These findings validate our method as a universal speedup mechanism for visual learning.
format Preprint
id arxiv_https___arxiv_org_abs_2604_15451
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Weak-to-Strong Knowledge Distillation Accelerates Visual Learning
Li, Baiang
Chai, Wenhao
Heide, Felix
Computer Vision and Pattern Recognition
Large-scale visual learning is increasingly limited by training cost. Existing knowledge distillation methods transfer from a stronger teacher to a weaker student for compression or final-accuracy improvement. We instead investigate distillation to accelerate the training of strong students. We propose a generalizable plug-and-play recipe that freezes a weaker teacher, applies distillation only in early training, and turns it off once the student reaches and surpasses teacher-level performance. For ImageNet and CIFAR classification, this strategy reaches target thresholds much earlier, with up to 4.8 times speedup measured by epochs. We confirm that the method generalizes to other tasks and report 1.7 times epoch speedup for object detection on the COCO dataset, and 2.5 times earlier target-FID crossing for diffusion generation on the CIFAR-10 dataset, measured in steps. These findings validate our method as a universal speedup mechanism for visual learning.
title Weak-to-Strong Knowledge Distillation Accelerates Visual Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.15451