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 351375 of 534 papers

TitleStatusHype
Post-training deep neural network pruning via layer-wise calibration0
Rethinking Network Pruning -- under the Pre-train and Fine-tune ParadigmCode0
Convolutional Neural Network Pruning with Structural Redundancy Reduction0
Cascade Weight Shedding in Deep Neural Networks: Benefits and Pitfalls for Network Pruning0
Lost in Pruning: The Effects of Pruning Neural Networks beyond Test Accuracy0
Understanding Diversity Based Neural Network Pruning in Teacher Student Setup0
Knowledge Distillation Circumvents Nonlinearity for Optical Convolutional Neural Networks0
Feature Selection for Multivariate Time Series via Network PruningCode0
Multi-Task Network Pruning and Embedded Optimization for Real-time Deployment in ADAS0
Network Automatic Pruning: Start NAP and Take a Nap0
Single-path Bit Sharing for Automatic Loss-aware Model Compression0
Max-Affine Spline Insights Into Deep Network PruningCode0
CAP-Context-Aware-Pruning-for-Semantic-Segmentation0
CAP: Context-Aware Pruning for Semantic-Segmentation0
On the Landscape of Sparse Linear Networks0
An empirical study of a pruning mechanismCode0
Extract Local Inference Chains of Deep Neural Nets0
Long Live the Lottery: The Existence of Winning Tickets in Lifelong Learning0
Waste not, Want not: All-Alive Pruning for Extremely Sparse Networks0
On the Decision Boundaries of Neural Networks. A Tropical Geometry Perspective0
Rapid Neural Pruning for Novel Datasets with Set-based Task-Adaptive Meta-Pruning0
When Are Neural Pruning Approximation Bounds Useful?0
Spectral Analysis for Semantic Segmentation with Applications on Feature Truncation and Weak Annotation0
Enabling Retrain-free Deep Neural Network Pruning using Surrogate Lagrangian Relaxation0
Efficient Incorporation of Multiple Latency Targets in the Once-For-All NetworkCode0
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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