SOTAVerified

Few-Shot Learning

Few-Shot Learning is an example of meta-learning, where a learner is trained on several related tasks, during the meta-training phase, so that it can generalize well to unseen (but related) tasks with just few examples, during the meta-testing phase. An effective approach to the Few-Shot Learning problem is to learn a common representation for various tasks and train task specific classifiers on top of this representation.

Source: Penalty Method for Inversion-Free Deep Bilevel Optimization

Papers

Showing 110 of 2964 papers

TitleStatusHype
GLAD: Generalizable Tuning for Vision-Language Models0
An Enhanced Privacy-preserving Federated Few-shot Learning Framework for Respiratory Disease Diagnosis0
Doodle Your Keypoints: Sketch-Based Few-Shot Keypoint Detection0
Few-Shot Learning by Explicit Physics Integration: An Application to Groundwater Heat TransportCode0
ViRefSAM: Visual Reference-Guided Segment Anything Model for Remote Sensing Segmentation0
Dynamic Context-Aware Prompt Recommendation for Domain-Specific AI Applications0
Ancient Script Image Recognition and Processing: A Review0
Universal Music Representations? Evaluating Foundation Models on World Music CorporaCode0
Few-Shot Learning for Industrial Time Series: A Comparative Analysis Using the Example of Screw-Fastening Process Monitoring0
The Sample Complexity of Parameter-Free Stochastic Convex Optimization0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Variational Prompt TuningHarmonic mean81.12Unverified