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 16011610 of 3073 papers

TitleStatusHype
On Deep Unsupervised Active Learning0
One-Bit Active Query With Contrastive Pairs0
One-bit Supervision for Image Classification: Problem, Solution, and Beyond0
One Class One Click: Quasi Scene-level Weakly Supervised Point Cloud Semantic Segmentation with Active Learning0
One-Round Active Learning0
One-shot Active Learning Based on Lewis Weight Sampling for Multiple Deep Models0
One Size Does Not Fit All: The Case for Personalised Word Complexity Models0
On Label-Efficient Computer Vision: Building Fast and Effective Few-Shot Image Classifiers0
Online Active Learning for Cost Sensitive Domain Adaptation0
Online Active Learning for Soft Sensor Development using Semi-Supervised Autoencoders0
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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