SOTAVerified

Neural Architecture Search

Neural architecture search (NAS) is a technique for automating the design of artificial neural networks (ANN), a widely used model in the field of machine learning. NAS essentially takes the process of a human manually tweaking a neural network and learning what works well, and automates this task to discover more complex architectures.

Image Credit : NAS with Reinforcement Learning

Papers

Showing 12011225 of 1915 papers

TitleStatusHype
Analyzing and Mitigating Interference in Neural Architecture Search0
StressNAS: Affect State and Stress Detection Using Neural Architecture Search0
iDARTS: Improving DARTS by Node Normalization and Decorrelation Discretization0
Lightweight Monocular Depth with a Novel Neural Architecture Search Method0
Design and Scaffolded Training of an Efficient DNN Operator for Computer Vision on the Edge0
Learning Effective and Efficient Embedding via an Adaptively-Masked Twins-based Layer0
D-DARTS: Distributed Differentiable Architecture SearchCode0
Lessons from the Clustering Analysis of a Search Space: A Centroid-based Approach to Initializing NAS0
Trends in Neural Architecture Search: Towards the Acceleration of Search0
Achieving on-Mobile Real-Time Super-Resolution with Neural Architecture and Pruning Search0
RANK-NOSH: Efficient Predictor-Based Architecture Search via Non-Uniform Successive Halving0
Single-DARTS: Towards Stable Architecture SearchCode0
Evolutionary Algorithms in Approximate Computing: A Survey0
Probeable DARTS with Application to Computational PathologyCode0
CONet: Channel Optimization for Convolutional Neural NetworksCode0
Is Differentiable Architecture Search truly a One-Shot Method?0
Improving Ranking Correlation of Supernet with Candidates Enhancement and Progressive TrainingCode0
Cascade Bagging for Accuracy Prediction with Few Training SamplesCode0
BenchENAS: A Benchmarking Platform for Evolutionary Neural Architecture SearchCode0
NASOA: Towards Faster Task-oriented Online Fine-tuning with a Zoo of Models0
Learning to Rank Ace Neural Architectures via Normalized Discounted Cumulative GainCode0
Efficient Neural Architecture Search with Performance Prediction0
WAS-VTON: Warping Architecture Search for Virtual Try-on Network0
FLASH: Fast Neural Architecture Search with Hardware Optimization0
AutoTinyBERT: Automatic Hyper-parameter Optimization for Efficient Pre-trained Language Models0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SPOS (ProxylessNAS (GPU) latency)Accuracy75.3Unverified
2SPOS (FBNet-C latency)Accuracy75.1Unverified
3SPOS (block search + channel search)Accuracy74.7Unverified
4MUXNet-xsTop-1 Error Rate33.3Unverified
5FBNetV2-F1Top-1 Error Rate31.7Unverified
6LayerNAS-60MTop-1 Error Rate31Unverified
7NASGEPTop-1 Error Rate29.51Unverified
8MUXNet-sTop-1 Error Rate28.4Unverified
9NN-MASS-ATop-1 Error Rate27.1Unverified
10FBNetV2-F3Top-1 Error Rate26.8Unverified
#ModelMetricClaimedVerifiedStatus
1CR-LSOAccuracy (Test)46.98Unverified
2Shapley-NASAccuracy (Test)46.85Unverified
3β-RDARTS-L2Accuracy (Test)46.71Unverified
4β-SDARTS-RSAccuracy (Test)46.71Unverified
5ASE-NAS+Accuracy (Val)46.66Unverified
6NARAccuracy (Test)46.66Unverified
7BaLeNAS-TFAccuracy (Test)46.54Unverified
8AG-NetAccuracy (Test)46.42Unverified
9Local searchAccuracy (Test)46.38Unverified
10NASBOTAccuracy (Test)46.37Unverified
#ModelMetricClaimedVerifiedStatus
1Balanced MixtureAccuracy (% )91.55Unverified
2GDASTop-1 Error Rate3.4Unverified
3Bonsai-NetTop-1 Error Rate3.35Unverified
4Net2 (2)Top-1 Error Rate3.3Unverified
5μDARTSTop-1 Error Rate3.28Unverified
6NN-MASS- CIFAR-CTop-1 Error Rate3.18Unverified
7NN-MASS- CIFAR-ATop-1 Error Rate3Unverified
8DARTS (first order)Top-1 Error Rate3Unverified
9NASGEPTop-1 Error Rate2.82Unverified
10AlphaX-1 (cutout NASNet)Top-1 Error Rate2.82Unverified