SOTAVerified

Network Pruning

Network Pruning is a popular approach to reduce a heavy network to obtain a light-weight form by removing redundancy in the heavy network. In this approach, a complex over-parameterized network is first trained, then pruned based on come criterions, and finally fine-tuned to achieve comparable performance with reduced parameters.

Source: Ensemble Knowledge Distillation for Learning Improved and Efficient Networks

Papers

Showing 301350 of 534 papers

TitleStatusHype
Validating the Lottery Ticket Hypothesis with Inertial Manifold Theory0
Self-supervised Feature-Gate Coupling for Dynamic Network PruningCode0
A Unified Approach to Coreset Learning0
Neural network is heterogeneous: Phase matters moreCode0
Learning Pruned Structure and Weights Simultaneously from Scratch: an Attention based Approach0
How I Learned to Stop Worrying and Love RetrainingCode0
RGP: Neural Network Pruning through Its Regular Graph Structure0
When to Prune? A Policy towards Early Structural Pruning0
SMOF: Squeezing More Out of Filters Yields Hardware-Friendly CNN Pruning0
Neural Network Pruning Through Constrained Reinforcement Learning0
Differentiable Network Pruning for Microcontrollers0
Compact CNN Models for On-device Ocular-based User Recognition in Mobile Devices0
ABCP: Automatic Block-wise and Channel-wise Network Pruning via Joint SearchCode0
Efficient Ensembles of Graph Neural Networks0
Structured Pruning Meets Orthogonality0
Can network pruning benefit deep learning under label noise?0
Automated Channel Pruning with Learned Importance0
LEAN: graph-based pruning for convolutional neural networks by extracting longest chains0
Network Pruning Optimization by Simulated Annealing Algorithm0
Global Magnitude Pruning With Minimum Threshold Is All We NeedCode0
Rethinking Again the Value of Network Pruning -- A Dynamical Isometry Perspective0
Learning Efficient Image Super-Resolution Networks via Structure-Regularized Pruning0
Stabilizing Elastic Weight Consolidation method in practical ML tasks and using weight importances for neural network pruningCode0
Reproducibility Study: Comparing Rewinding and Fine-tuning in Neural Network PruningCode0
Structured Pattern Pruning Using Regularization0
Causal Explanation of Convolutional Neural NetworksCode0
GDP: Stabilized Neural Network Pruning via Gates with Differentiable Polarization0
Multistage Pruning of CNN Based ECG Classifiers for Edge Devices0
New Pruning Method Based on DenseNet Network for Image Classification0
Pruning in the Face of AdversariesCode0
Pruning vs XNOR-Net: A Comprehensive Study of Deep Learning for Audio Classification on Edge-devicesCode0
Basis Scaling and Double Pruning for Efficient Inference in Network-Based Transfer Learning0
How much pre-training is enough to discover a good subnetwork?0
Model Preserving Compression for Neural NetworksCode0
Continual Learning for Task-oriented Dialogue System with Iterative Network Pruning, Expanding and MaskingCode0
Blending Pruning Criteria for Convolutional Neural Networks0
Model compression as constrained optimization, with application to neural nets. Part V: combining compressionsCode0
Weight Reparametrization for Budget-Aware Network Pruning0
Connectivity Matters: Neural Network Pruning Through the Lens of Effective SparsityCode0
A Lottery Ticket Hypothesis Framework for Low-Complexity Device-Robust Neural Acoustic Scene Classification0
Dep-L_0: Improving L_0-based Network Sparsification via Dependency ModelingCode0
Connection Sensitivity Matters for Training-free DARTS: From Architecture-Level Scoring to Operation-Level Sensitivity Analysis0
Iterative Network Pruning with Uncertainty Regularization for Lifelong Sentiment ClassificationCode0
Cogradient Descent for Dependable LearningCode0
Network Pruning via Performance MaximizationCode0
Heterogeneous Federated Learning using Dynamic Model Pruning and Adaptive Gradient0
Dynamic Probabilistic Pruning: A general framework for hardware-constrained pruning at different granularities0
A Probabilistic Approach to Neural Network Pruning0
Troubleshooting Blind Image Quality Models in the Wild0
Dynamical Isometry: The Missing Ingredient for Neural Network Pruning0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ResNet50-2.3 GFLOPsAccuracy78.79Unverified
2ResNet50-1.5 GFLOPsAccuracy78.07Unverified
3ResNet50 2.5 GFLOPSAccuracy78Unverified
4RegX-1.6GAccuracy77.97Unverified
5ResNet50 2.0 GFLOPSAccuracy77.7Unverified
6ResNet50-3G FLOPsAccuracy77.1Unverified
7ResNet50-2G FLOPsAccuracy76.4Unverified
8ResNet50-1G FLOPsAccuracy76.38Unverified
9TAS-pruned ResNet-50Accuracy76.2Unverified
10ResNet50Accuracy75.59Unverified
#ModelMetricClaimedVerifiedStatus
1FeatherTop-1 Accuracy76.93Unverified
2SpartanTop-1 Accuracy76.17Unverified
3ST-3Top-1 Accuracy76.03Unverified
4AC/DCTop-1 Accuracy75.64Unverified
5CSTop-1 Accuracy75.5Unverified
6ProbMaskTop-1 Accuracy74.68Unverified
7STRTop-1 Accuracy74.31Unverified
8DNWTop-1 Accuracy74Unverified
9GMPTop-1 Accuracy73.91Unverified
#ModelMetricClaimedVerifiedStatus
1+U-DML*Inference Time (ms)675.56Unverified
2DenseAccuracy79Unverified
3AC/DCAccuracy78.2Unverified
4Beta-RankAccuracy74.01Unverified
5TAS-pruned ResNet-110Accuracy73.16Unverified
#ModelMetricClaimedVerifiedStatus
1TAS-pruned ResNet-110Accuracy94.33Unverified
2ShuffleNet – QuantisedInference Time (ms)23.15Unverified
3AlexNet – QuantisedInference Time (ms)5.23Unverified
4MobileNet – QuantisedInference Time (ms)4.74Unverified
#ModelMetricClaimedVerifiedStatus
1FFN-ShapleyPrunedAvg #Steps12.05Unverified