SOTAVerified

Data Augmentation

Data augmentation involves techniques used for increasing the amount of data, based on different modifications, to expand the amount of examples in the original dataset. Data augmentation not only helps to grow the dataset but it also increases the diversity of the dataset. When training machine learning models, data augmentation acts as a regularizer and helps to avoid overfitting.

Data augmentation techniques have been found useful in domains like NLP and computer vision. In computer vision, transformations like cropping, flipping, and rotation are used. In NLP, data augmentation techniques can include swapping, deletion, random insertion, among others.

Further readings:

( Image credit: Albumentations )

Papers

Showing 75517575 of 8378 papers

TitleStatusHype
Graph-Convolutional-Beta-VAE for Synthetic Abdominal Aorta Aneurysm Generation0
Graph Convolutional Neural Networks with Node Transition Probability-based Message Passing and DropNode Regularization0
GraphCrop: Subgraph Cropping for Graph Classification0
Graph data augmentation with Gromow-Wasserstein Barycenters0
Graph Masked Autoencoder for Spatio-Temporal Graph Learning0
Graph Mixup with Soft Alignments0
Graph Out-of-Distribution Generalization with Controllable Data Augmentation0
Graph-Preserving Grid Layout: A Simple Graph Drawing Method for Graph Classification using CNNs0
Graph-Regularized Manifold-Aware Conditional Wasserstein GAN for Brain Functional Connectivity Generation0
GraphSR: A Data Augmentation Algorithm for Imbalanced Node Classification0
Graph Structure and Feature Extrapolation for Out-of-Distribution Generalization0
Graph Structure Based Data Augmentation Method0
Graph Transplant: Node Saliency-Guided Graph Mixup with Local Structure Preservation0
Greedy Policy Search: A Simple Baseline for Learnable Test-Time Augmentation0
GridMix: Strong regularization through local context mapping0
Grokking in the Wild: Data Augmentation for Real-World Multi-Hop Reasoning with Transformers0
Grouping-By-ID: Guarding Against Adversarial Domain Shifts0
GS-PT: Exploiting 3D Gaussian Splatting for Comprehensive Point Cloud Understanding via Self-supervised Learning0
GT-GAN: General Purpose Time Series Synthesis with Generative Adversarial Networks0
GUESS: Generative Uncertainty Ensemble for Self Supervision0
Guidance-Based Prompt Data Augmentation in Specialized Domains for Named Entity Recognition0
Guidance for Intra-cardiac Echocardiography Manipulation to Maintain Continuous Therapy Device Tip Visibility0
Guided Data Augmentation for Offline Reinforcement Learning and Imitation Learning0
Guided Diffusion-based Counterfactual Augmentation for Robust Session-based Recommendation0
Guided Discrete Diffusion for Electronic Health Record Generation0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1DeiT-B (+MixPro)Accuracy (%)82.9Unverified
2ResNet-200 (DeepAA)Accuracy (%)81.32Unverified
3DeiT-S (+MixPro)Accuracy (%)81.3Unverified
4ResNet-200 (Fast AA)Accuracy (%)80.6Unverified
5ResNet-200 (UA)Accuracy (%)80.4Unverified
6ResNet-200 (AA)Accuracy (%)80Unverified
7ResNet-50 (DeepAA)Accuracy (%)78.3Unverified
8ResNet-50 (TA wide)Accuracy (%)78.07Unverified
9ResNet-50 (LoRot-E)Accuracy (%)77.72Unverified
10ResNet-50 (LoRot-I)Accuracy (%)77.71Unverified
#ModelMetricClaimedVerifiedStatus
1WideResNet-40-2 (Faster AA)Percentage error3.7Unverified
2Shake-Shake (26 2×32d) (Faster AA)Percentage error2.7Unverified
3WideResNet-28-10 (Faster AA)Percentage error2.6Unverified
4Shake-Shake (26 2×96d) (Faster AA)Percentage error2Unverified
5Shake-Shake (26 2×112d) (Faster AA)Percentage error2Unverified
#ModelMetricClaimedVerifiedStatus
1DiffAugClassification Accuracy92.7Unverified
2PaCMAPClassification Accuracy85.3Unverified
3hNNEClassification Accuracy77.4Unverified
4TopoAEClassification Accuracy74.6Unverified