- Optimization Method
RL
--> Reinforcement LearningEA
--> Evolution AlgorithmGD
--> Gradient DescentBO
--> Bayesian OptimisationMCTS
--> Monte Carlo Tree SearchSMBO
--> Sequential Model-Based Optimization1S
--> 1-Shot Learning
- Objective Function
DE
--> DEvice-related: inference time, memory usage, power consumption
- Training
FT
--> FineTune on pretrained modelsSR
--> ScRatchTL
--> Transfer Learning between tasksPS
--> Parameter SharingNM
--> Network MorphismsKT
--> Knowledge Transfer
- Search Level
TP
--> ToPology of connection pathsSG
--> SubGraph within a large computational graphSM
--> Frequent Computational Subgraph MiningRNN
SE
--> Shink and ExpandBC
--> Block-wise ComponentML
--> Modeling LanguageMM
--> Modularized Morphing
- Accurarcy Computation
PP
--> Performance PredictionST
--> STatistics derived from filter feature mapsWP
--> Weight Prediction
Neural Architecture Optimization
[arXiv:1808.07233]
Designing Adaptive Neural Networks for Energy-Constrained Image Classification
[arXiv:1808.01550]
Reinforced Evolutionary Neural Architecture Search
[arXiv:1808.00193]
MnasNet: Platform-Aware Neural Architecture Search for Mobile
[arXiv:1807.11626]
MaskConnect: Connectivity Learning by Gradient Descent
[arXiv:1807.11473]
[ECCV'18]
Efficient Neural Architecture Search with Network Morphism
[arXiv:1806.10282]
[code]
DARTS: Differentiable Architecture Search
:star:
[arXiv:1806.09055]
[code]
--> GD
DPP-Net: Device-aware Progressive Search for Pareto-optimal Neural Architectures
[arXiv:1806.08198]
[ICLR'18 Workshop]
--> DE
Path-Level Network Transformation for Efficient Architecture Search
[arXiv:1806.02639]
[code]
[ICML'18]
--> FT
TP
RL
AlphaX: eXploring Neural Architectures with Deep Neural Networks and Monte Carlo Tree Search
[arXiv:1805.07440]
--> SR
MCTS
PP
Neural Architecture Construction using EnvelopeNets
[arXiv:1803.06744]
--> ST
Transfer Automatic Machine Learning
[arXiv:1803.02780]
--> RL
TL
Neural Architecture Search with Bayesian Optimisation and Optimal Transport
[arXiv:1802.07191]
--> BO
Efficient Neural Architecture Search via Parameter Sharing
:star:
[arXiv:1802.03268]
[code]
[ICML'18]
--> PS
RL
SG
Regularized Evolution for Image Classifier Architecture Search
[arXiv:1802.01548]
--> EA
GitGraph - from Computational Subgraphs to Smaller Architecture Search Spaces
[arXiv:1801.05159]
[ICLR'18 Workshop]
--> SM
A Flexible Approach to Automated RNN Architecture Generation
[arXiv:1712.07316]
[ICLR'18 Workshop]
--> RNN
Peephole: Predicting Network Performance Before Training
:star:
[arXiv:1712.03351]
--> PP
Progressive Neural Architecture Search
[arXiv:1712.00559]
--> SMBO
MorphNet: Fast & Simple Resource-Constrained Structure Learning of Deep Networks
:star:
[arXiv:1711.06798]
--> SE
Simple And Efficient Architecture Search for Convolutional Neural Networks
:star:
[arXiv:1711.04528]
[ICLR'18 Workshop]
--> NM
Hierarchical Representations for Efficient Architecture Search
[arXiv:1711.00436]
[ICLR'18]
--> EA
TP
Practical Block-wise Neural Network Architecture Generation
[arXiv:1708.05552]
[CVPR'18]
--> BC
SMASH: One-Shot Model Architecture Search through HyperNetworks
[arXiv:1708.05344]
[code]
[ICLR'18]
--> WP
Learning Transferable Architectures for Scalable Image Recognition
[arXiv:1707.07012]
--> BC
Efficient Architecture Search by Network Transformation
[arXiv:1707.04873]
[code]
[AAAI'18]
--> FT
RL
SE
Learning Time/Memory-Efficient Deep Architectures with Budgeted Super Networks
:star:
[arXiv:1706.00046]
[code]
[CVPR'18]
--> DE
GD
Accelerating Neural Architecture Search using Performance Prediction
[arXiv:1705.10823]
[ICLR'18 Workshop]
--> PP
Understanding and Simplifying One-Shot Architecture Search
:star:
[ICML'18]
--> 1S
DeepArchitect: Automatically Designing and Training Deep Architectures
[arXiv:1704.08792]
[code]
--> ML
Genetic CNN
[arXiv:1703.01513]
[code]
[ICCV'17]
--> EA
Modularized Morphing of Neural Networks
[arXiv:1701.03281]
[ICLR'17 Workshop]
--> FT
MM
Large-Scale Evolution of Image Classifiers
[arXiv:1703.01041]
[ICML'17]
--> EA
Designing Neural Network Architectures using Reinforcement Learning
[arXiv:1611.02167]
[code]
[ICLR'17]
--> RL
Learning Curve Prediction with Bayesian Neural Networks
[ICLR'17]
--> PP
Neural Architecture Search with Reinforcement Learning
[arXiv:1611.01578]
[code (3rd)]
[ICLR'17]
--> RL
Convolutional Neural Fabrics
[arXiv:1606.02492]
[code:Caffe]
[code:PyTorch]
[NIPS'16]
Network Morphism
:star:
[arXiv:1603.01670]
[ICML'16]
--> FT
MM
Net2Net: Accelerating Learning via Knowledge Transfer
:star:
[arXiv:1511.05641]
[ICLR'16]
--> KT
A Hypercube-Based Indirect Encoding for Evolving Large-Scale
Neural Networks
[Artificial Life journal'09]
[code]
--> EA
TP