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 22512300 of 3073 papers

TitleStatusHype
Deep Active Learning: Unified and Principled Method for Query and TrainingCode0
Rethinking deep active learning: Using unlabeled data at model trainingCode0
Online Adaptive Asymmetric Active Learning with Limited BudgetsCode0
The Effectiveness of Variational Autoencoders for Active Learning0
Bias-Aware Heapified Policy for Active Learning0
Using Error Decay Prediction to Overcome Practical Issues of Deep Active Learning for Named Entity Recognition0
Active learning in the geometric block model0
Coincidence, Categorization, and Consolidation: Learning to Recognize Sounds with Minimal Supervision0
Cost-efficient segmentation of electron microscopy images using active learning0
Incentive Compatible Active Learning0
Context-aware Active Multi-Step Reinforcement Learning0
An Overview of Data-Importance Aware Radio Resource Management for Edge Machine Learning0
Bayesian Active Learning for Structured Output Design0
Adaptivity in Adaptive Submodularity0
Language Grounding through Social Interactions and Curiosity-Driven Multi-Goal Learning0
Interactive Refinement of Cross-Lingual Word EmbeddingsCode0
Subspace Clustering with Active Learning0
Char-RNN and Active Learning for Hashtag Segmentation0
Active Learning for Black-Box Adversarial Attacks in EEG-Based Brain-Computer Interfaces0
Assessing the Frontier: Active Learning, Model Accuracy, and Multi-objective Materials Discovery and Optimization0
Spatially regularized active diffusion learning for high-dimensional images0
Picking groups instead of samples: A close look at Static Pool-based Meta-Active Learning0
Empirical Evaluation of Active Learning Techniques for Neural MT0
Active Learning via Membership Query Synthesis for Semi-Supervised Sentence ClassificationCode0
Active^2 Learning: Actively reducing redundancies in Active Learning methods for Sequence Tagging and Machine TranslationCode0
Finding Microaggressions in the Wild: A Case for Locating Elusive Phenomena in Social Media Posts0
Safe Exploration for Interactive Machine Learning0
Understand customer reviews with less data and in short time: pretrained language representation and active learning0
Small-GAN: Speeding Up GAN Training Using Core-sets0
An Active Approach for Model InterpretationCode0
Prediction stability as a criterion in active learning0
Bayesian Experimental Design for Finding Reliable Level Set under Input Uncertainty0
Machine Learning Inter-Atomic Potentials Generation Driven by Active Learning: A Case Study for Amorphous and Liquid Hafnium dioxideCode0
Mining GOLD Samples for Conditional GANsCode0
Consistency-based Semi-supervised Active Learning: Towards Minimizing Labeling Cost0
Active Learning for Graph Neural Networks via Node Feature Propagation0
Gaussian Process Meta-Representations For Hierarchical Neural Network Weight Priors0
Not All are Made Equal: Consistency of Weighted Averaging Estimators Under Active Learning0
Active Learning with Importance Sampling0
Optimal experimental design via Bayesian optimization: active causal structure learning for Gaussian process networks0
Voice for the Voiceless: Active Sampling to Detect Comments Supporting the Rohingyas0
A Survey on Active Learning and Human-in-the-Loop Deep Learning for Medical Image Analysis0
mfEGRA: Multifidelity Efficient Global Reliability Analysis through Active Learning for Failure Boundary Location0
Investigating the Effectiveness of Representations Based on Word-Embeddings in Active Learning for Labelling Text DatasetsCode0
Active Learning with Point Supervision for Cost-Effective Panicle Detection in Cereal Crops0
Character Feature Engineering for Japanese Word Segmentation0
ConfusionFlow: A model-agnostic visualization for temporal analysis of classifier confusion0
Improving Differentially Private Models with Active Learning0
Learning to Caption Images Through a Lifetime by Asking Questions0
O2U-Net: A Simple Noisy Label Detection Approach for Deep Neural Networks0
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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