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Логистическая регрессия при самообучении×Логистическая регрессия с частичной разметкой×
ОбластьМашинное обучениеМашинное обучение
СемействоMachine learningMachine learning
Год появления2020s1995–2000
Автор методаChen et al. (SimCLR linear evaluation protocol, 2020); logistic probe practice widely adopted across SSL literatureNigam, K.; McCallum, A. et al. (EM variant); Yarowsky, D. (self-training)
ТипSelf-supervised pretraining + supervised linear classificationSemi-supervised classifier
Основополагающий источникChen, T., Kornblith, S., Norouzi, M., & Hinton, G. (2020). A Simple Framework for Contrastive Learning of Visual Representations. Proceedings of the 37th International Conference on Machine Learning (ICML), 1597–1607. link ↗Nigam, K., McCallum, A., Thrun, S., & Mitchell, T. (2000). Text classification from labeled and unlabeled documents using EM. Machine Learning, 39, 103–134. DOI ↗
Другие названияSSL linear probe, contrastive pretraining with logistic classifier, self-supervised linear evaluation, SSL + logistic regressionSSL logistic regression, semi-supervised LR, EM logistic regression, self-training logistic classifier
Связанные55
СводкаSelf-supervised logistic regression is a two-stage pipeline in which a neural encoder is first trained on abundant unlabeled data through a self-supervised pretext task — such as contrastive learning or masked prediction — and then the frozen learned representations are classified with a standard logistic regression model trained on a small labeled dataset. This linear evaluation protocol is widely used to benchmark the quality of self-supervised representations.Semi-supervised logistic regression extends the standard logistic classifier by incorporating unlabeled data during training. Using self-training, expectation-maximization, or label-propagation wrappers, it iteratively assigns soft labels to unlabeled examples and refines model parameters, improving generalization when labeled data are scarce relative to the full dataset.
ScholarGateНабор данных
  1. v1
  2. 2 Источники
  3. PUBLISHED
  1. v1
  2. 2 Источники
  3. PUBLISHED

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ScholarGateСравнение методов: Self-supervised Logistic Regression · Semi-supervised Logistic Regression. Получено 2026-06-17 из https://scholargate.app/ru/compare