SOTAVerified

Active Learning

Active Learning is a paradigm in supervised machine learning which uses fewer training examples to achieve better optimization by iteratively training a predictor, and using the predictor in each iteration to choose the training examples which will increase its chances of finding better configurations and at the same time improving the accuracy of the prediction model

Source: Polystore++: Accelerated Polystore System for Heterogeneous Workloads

Papers

Showing 30013050 of 3073 papers

TitleStatusHype
Galaxy Zoo: Probabilistic Morphology through Bayesian CNNs and Active LearningCode0
Machine Learning-Accelerated Multi-Objective Design of Fractured Geothermal SystemsCode0
ALiPy: Active Learning in PythonCode0
Turn-Level Active Learning for Dialogue State TrackingCode0
Active-LATHE: An Active Learning Algorithm for Boosting the Error Exponent for Learning Homogeneous Ising TreesCode0
Reliable training and estimation of variance networksCode0
Noise Contrastive Priors for Functional UncertaintyCode0
Bayesian Active Learning for Classification and Preference LearningCode0
Machine Learning Inter-Atomic Potentials Generation Driven by Active Learning: A Case Study for Amorphous and Liquid Hafnium dioxideCode0
ALINE: Joint Amortization for Bayesian Inference and Active Data AcquisitionCode0
Gaussian Switch Sampling: A Second Order Approach to Active LearningCode0
Machine learning of hierarchical clustering to segment 2D and 3D imagesCode0
Automated Performance Testing Based on Active Deep LearningCode0
ActiveHARNet: Towards On-Device Deep Bayesian Active Learning for Human Activity RecognitionCode0
Targeted active learning for probabilistic modelsCode0
Automated Muscle Segmentation from Clinical CT using Bayesian U-Net for Personalized Musculoskeletal ModelingCode0
Single-model uncertainty quantification in neural network potentials does not consistently outperform model ensemblesCode0
Algorithm Selection for Deep Active Learning with Imbalanced DatasetsCode0
Single Shot Active Learning using Pseudo AnnotatorsCode0
Active Learning with Partial FeedbackCode0
Automated discovery of a robust interatomic potential for aluminumCode0
Generation Of Colors using Bidirectional Long Short Term Memory NetworksCode0
Generative Active Learning for Image Synthesis PersonalizationCode0
AutoAL: Automated Active Learning with Differentiable Query Strategy SearchCode0
Active learning for efficient discovery of optimal gene combinations in the combinatorial perturbation spaceCode0
Algorithmic Assurance: An Active Approach to Algorithmic Testing using Bayesian OptimisationCode0
Overcoming Overconfidence for Active LearningCode0
Generative Adversarial Active Learning for Unsupervised Outlier DetectionCode0
ALE: A Simulation-Based Active Learning Evaluation Framework for the Parameter-Driven Comparison of Query Strategies for NLPCode0
Slice Tuner: A Selective Data Acquisition Framework for Accurate and Fair Machine Learning ModelsCode0
A Cross-Domain Benchmark for Active LearningCode0
Generative Subspace Adversarial Active Learning for Outlier Detection in Multiple Views of High-dimensional DataCode0
Targeting Negative Flips in Active Learning using Validation SetsCode0
PAL -- Parallel active learning for machine-learned potentialsCode0
A Comparison of Strategies for Source-Free Domain AdaptationCode0
PALS: Personalized Active Learning for Subjective Tasks in NLPCode0
Matching a Desired Causal State via Shift InterventionsCode0
GFlowCausal: Generative Flow Networks for Causal DiscoveryCode0
atTRACTive: Semi-automatic white matter tract segmentation using active learningCode0
Materials-Discovery Workflows Guided by Symbolic Regression: Identifying Acid-Stable Oxides for ElectrocatalysisCode0
"Give Me an Example Like This": Episodic Active Reinforcement Learning from DemonstrationsCode0
A Survey on Multi-Task LearningCode0
Global Safe Sequential Learning via Efficient Knowledge TransferCode0
An active learning method for solving competitive multi-agent decision-making and control problemsCode0
Maturity-Aware Active Learning for Semantic Segmentation with Hierarchically-Adaptive Sample AssessmentCode0
A Survey on Deep Learning of Small Sample in Biomedical Image AnalysisCode0
Rethinking deep active learning: Using unlabeled data at model trainingCode0
Gradient and Uncertainty Enhanced Sequential Sampling for Global FitCode0
Rethinking Epistemic and Aleatoric Uncertainty for Active Open-Set Annotation: An Energy-Based ApproachCode0
Grain: Improving Data Efficiency of Graph Neural Networks via Diversified Influence MaximizationCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1TypiClustAccuracy93.2Unverified
2PT4ALAccuracy93.1Unverified
3Learning lossAccuracy91.01Unverified
4CoreGCNAccuracy90.7Unverified
5Core-setAccuracy89.92Unverified
6Random Baseline (Resnet18)Accuracy88.45Unverified
7Random Baseline (VGG16)Accuracy85.09Unverified