SOTAVerified

Multi-class Classification

Multi-class classification is a type of supervised learning where the goal is to assign an input to one of three or more distinct classes. Unlike binary classification (which has only two classes), multi-class classification handles multiple labels and uses algorithms like logistic regression, decision trees, random forests, SVMs, or neural networks to predict the correct category based on the features of the input data.

Papers

Showing 281290 of 903 papers

TitleStatusHype
Neural Collapse in Multi-label Learning with Pick-all-label LossCode0
Predictor-Rejector Multi-Class Abstention: Theoretical Analysis and Algorithms0
Theoretically Grounded Loss Functions and Algorithms for Score-Based Multi-Class Abstention0
Powerset multi-class cross entropy loss for neural speaker diarization0
Utilizing Weak Supervision To Generate Indonesian Conservation Dataset0
Taming the Sigmoid Bottleneck: Provably Argmaxable Sparse Multi-Label ClassificationCode0
Open-Set Knowledge-Based Visual Question Answering with Inference PathsCode0
Pool-Based Active Learning with Proper Topological Regions0
QUILT: Effective Multi-Class Classification on Quantum Computers Using an Ensemble of Diverse Quantum Classifiers0
A matter of attitude: Focusing on positive and active gradients to boost saliency mapsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1COVID-CXNetAccuracy (%)94.2Unverified
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1COVID-ResNetF1 score0.9Unverified
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1SVM (tficf)Macro F173.9Unverified
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1Extra TreesF1-Score93.36Unverified
#ModelMetricClaimedVerifiedStatus
1Multi-Model EnsembleMean AUC0.99Unverified