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 19261950 of 4240 papers

TitleStatusHype
Improving Acoustic Scene Classification in Low-Resource Conditions0
GVP: Generative Volumetric Primitives0
Guiding Teacher Forcing with Seer Forcing for Neural Machine Translation0
Improving Autoregressive NMT with Non-Autoregressive Model0
Improving CLIP Robustness with Knowledge Distillation and Self-Training0
Bilateral Memory Consolidation for Continual Learning0
Guiding CTC Posterior Spike Timings for Improved Posterior Fusion and Knowledge Distillation0
Guided Deep Metric Learning0
GTCOM Neural Machine Translation Systems for WMT190
Decision Boundary-aware Knowledge Consolidation Generates Better Instance-Incremental Learner0
Improving De-Raining Generalization via Neural Reorganization0
Growing Deep Neural Network Considering with Similarity between Neurons0
Decentralized and Model-Free Federated Learning: Consensus-Based Distillation in Function Space0
Debias the Black-box: A Fair Ranking Framework via Knowledge Distillation0
Improving Facial Landmark Detection Accuracy and Efficiency with Knowledge Distillation0
Improving Feature Generalizability with Multitask Learning in Class Incremental Learning0
Improving Frame-level Classifier for Word Timings with Non-peaky CTC in End-to-End Automatic Speech Recognition0
Always Strengthen Your Strengths: A Drift-Aware Incremental Learning Framework for CTR Prediction0
Adaptively Integrated Knowledge Distillation and Prediction Uncertainty for Continual Learning0
Improving Generalization of Pre-trained Language Models via Stochastic Weight Averaging0
Improving Knowledge Distillation for BERT Models: Loss Functions, Mapping Methods, and Weight Tuning0
A Closer Look at Knowledge Distillation with Features, Logits, and Gradients0
Sentence-wise Speech Summarization: Task, Datasets, and End-to-End Modeling with LM Knowledge Distillation0
AdvFunMatch: When Consistent Teaching Meets Adversarial Robustness0
Group-Mix SAM: Lightweight Solution for Industrial Assembly Line Applications0
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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