SOTAVerified

Knowledge Distillation

Knowledge distillation is the process of transferring knowledge from a large model to a smaller one. While large models (such as very deep neural networks or ensembles of many models) have higher knowledge capacity than small models, this capacity might not be fully utilized.

Papers

Showing 34263450 of 4240 papers

TitleStatusHype
Automated Channel Pruning with Learned Importance0
Distilling GANs with Style-Mixed Triplets for X2I Translation with Limited Data0
Explaining Knowledge Graph Embedding via Latent Rule Learning0
SeqPATE: Differentially Private Text Generation via Knowledge Distillation0
Not All Regions are Worthy to be Distilled: Region-aware Knowledge Distillation Towards Efficient Image-to-Image Translation0
Scaling Fair Learning to Hundreds of Intersectional Groups0
Self-Slimming Vision Transformer0
Convolutional Neural Network Compression through Generalized Kronecker Product Decomposition0
Stingy Teacher: Sparse Logits Suffice to Fail Knowledge Distillation0
Generate, Annotate, and Learn: Generative Models Advance Self-Training and Knowledge Distillation0
To Smooth or not to Smooth? On Compatibility between Label Smoothing and Knowledge Distillation0
Adaptive Label Smoothing with Self-Knowledge0
Representation Consolidation from Multiple Expert Teachers0
Source-Target Unified Knowledge Distillation for Memory-Efficient Federated Domain Adaptation on Edge Devices0
Wakening Past Concepts without Past Data: Class-incremental Learning from Placebos0
A Unified Knowledge Distillation Framework for Deep Directed Graphical Models0
Learning Efficient Image Super-Resolution Networks via Structure-Regularized Pruning0
Understanding the Success of Knowledge Distillation -- A Data Augmentation Perspective0
Self-supervised Models are Good Teaching Assistants for Vision Transformers0
MOBA: Multi-teacher Model Based Reinforcement Learning0
Fast and Efficient Once-For-All Networks for Diverse Hardware Deployment0
Self-Distilled Pruning Of Neural Networks0
Exploiting Knowledge Distillation for Few-Shot Image Generation0
A Comprehensive Overhaul of Distilling Unconditional GANs0
Reducing the Teacher-Student Gap via Adaptive Temperatures0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ScaleKD (T:BEiT-L S:ViT-B/14)Top-1 accuracy %86.43Unverified
2ScaleKD (T:Swin-L S:ViT-B/16)Top-1 accuracy %85.53Unverified
3ScaleKD (T:Swin-L S:ViT-S/16)Top-1 accuracy %83.93Unverified
4ScaleKD (T:Swin-L S:Swin-T)Top-1 accuracy %83.8Unverified
5KD++(T: regnety-16GF S:ViT-B)Top-1 accuracy %83.6Unverified
6VkD (T:RegNety 160 S:DeiT-S)Top-1 accuracy %82.9Unverified
7SpectralKD (T:Swin-S S:Swin-T)Top-1 accuracy %82.7Unverified
8ScaleKD (T:Swin-L S:ResNet-50)Top-1 accuracy %82.55Unverified
9DiffKD (T:Swin-L S: Swin-T)Top-1 accuracy %82.5Unverified
10DIST (T: Swin-L S: Swin-T)Top-1 accuracy %82.3Unverified
#ModelMetricClaimedVerifiedStatus
1SRD (T:resnet-32x4, S:shufflenet-v2)Top-1 Accuracy (%)79.86Unverified
2shufflenet-v2(T:resnet-32x4, S:shufflenet-v2)Top-1 Accuracy (%)78.76Unverified
3MV-MR (T: CLIP/ViT-B-16 S: resnet50)Top-1 Accuracy (%)78.6Unverified
4resnet8x4 (T: resnet32x4 S: resnet8x4)Top-1 Accuracy (%)78.28Unverified
5resnet8x4 (T: resnet32x4 S: resnet8x4 [modified])Top-1 Accuracy (%)78.08Unverified
6ReviewKD++(T:resnet-32x4, S:shufflenet-v2)Top-1 Accuracy (%)77.93Unverified
7ReviewKD++(T:resnet-32x4, S:shufflenet-v1)Top-1 Accuracy (%)77.68Unverified
8resnet8x4 (T: resnet32x4 S: resnet8x4)Top-1 Accuracy (%)77.5Unverified
9resnet8x4 (T: resnet32x4 S: resnet8x4)Top-1 Accuracy (%)76.68Unverified
10resnet8x4 (T: resnet32x4 S: resnet8x4)Top-1 Accuracy (%)76.31Unverified
#ModelMetricClaimedVerifiedStatus
1LSHFM (T: ResNet101 S: ResNet50)mAP93.17Unverified
2LSHFM (T: ResNet101 S: MobileNetV2)mAP90.14Unverified
#ModelMetricClaimedVerifiedStatus
1TIE-KD (T: Adabins S: MobileNetV2)RMSE2.43Unverified