SOTAVerified

Meta-Learning

Meta-learning is a methodology considered with "learning to learn" machine learning algorithms.

( Image credit: Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks )

Papers

Showing 12261250 of 3569 papers

TitleStatusHype
Generalizable Implicit Neural Representations via Instance Pattern ComposersCode1
Adversarial Attacks are a Surprisingly Strong Baseline for Poisoning Few-Shot Meta-Learners0
Dynamic Loss For Robust LearningCode0
A Recursively Recurrent Neural Network (R2N2) Architecture for Learning Iterative Algorithms0
Discovering Evolution Strategies via Meta-Black-Box OptimizationCode2
Adversarial Cheap TalkCode3
Environmental Sensor Placement with Convolutional Gaussian Neural ProcessesCode0
Audio Anti-spoofing Using a Simple Attention Module and Joint Optimization Based on Additive Angular Margin Loss and Meta-learning0
NEVIS'22: A Stream of 100 Tasks Sampled from 30 Years of Computer Vision ResearchCode1
Latent Bottlenecked Attentive Neural ProcessesCode0
Artificial intelligence approaches for materials-by-design of energetic materials: state-of-the-art, challenges, and future directions0
Few-Shot Inductive Learning on Temporal Knowledge Graphs using Concept-Aware Information0
Meta-Learning of Neural State-Space Models Using Data From Similar Systems0
Scalable PAC-Bayesian Meta-Learning via the PAC-Optimal Hyper-Posterior: From Theory to Practice0
Towards Generalization on Real Domain for Single Image Dehazing via Meta-Learning0
Few-shot Metric Learning: Online Adaptation of Embedding for Retrieval0
Stackelberg Meta-Learning Based Control for Guided Cooperative LQG Systems0
Cross-Platform and Cross-Domain Abusive Language Detection with Supervised Contrastive Learning0
Few-shot Classification with Hypersphere Modeling of Prototypes0
Few-Shot Character Understanding in Movies as an Assessment to Meta-Learning of Theory-of-MindCode0
MetaLoc: Learning to Learn Wireless Localization0
Learning advisor networks for noisy image classificationCode0
Enabling Deep Learning-based Physical-layer Secret Key Generation for FDD-OFDM Systems in Multi-Environments0
Tuning Language Models as Training Data Generators for Augmentation-Enhanced Few-Shot LearningCode1
Toward Unsupervised Outlier Model SelectionCode1
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MZ+ReconMeta-train success rate97.8Unverified
2MZMeta-train success rate97.6Unverified
3MAMLMeta-test success rate36Unverified
4RL^2Meta-test success rate10Unverified
5DnCMeta-test success rate5.4Unverified
6PEARLMeta-test success rate0Unverified
#ModelMetricClaimedVerifiedStatus
1SoftModuleAverage Success Rate60Unverified
2Multi-task multi-head SACAverage Success Rate35.85Unverified
3DisCorAverage Success Rate26Unverified
4NDPAverage Success Rate11Unverified
#ModelMetricClaimedVerifiedStatus
1MZ+ReconMeta-test success rate (zero-shot)18.5Unverified
2MZMeta-test success rate (zero-shot)17.7Unverified
#ModelMetricClaimedVerifiedStatus
1Metadrop% Test Accuracy95.75Unverified