Сравнение на методи
Прегледайте избраните методи един до друг; редовете с разлики са откроени.
| Полу-наблюдавано обучение с малко примери (Semi-supervised Few-shot Learning)× | Самообучаващо се учене× | |
|---|---|---|
| Област | Машинно обучение | Машинно обучение |
| Семейство | Machine learning | Machine learning |
| Година на възникване≠ | 2018 | 2018–2020 |
| Създател≠ | Ren, M. et al. (ICLR 2018); builds on Finn et al. (MAML, 2017) | LeCun, Y. and community (formalized ~2018–2020) |
| Тип≠ | Meta-learning with unlabeled auxiliary data | Representation learning paradigm |
| Основополагащ източник≠ | Ren, M., Triantafillou, E., Ravi, S., Snell, J., Swersky, K., Tenenbaum, J. B., Larochelle, H., & Zemel, R. S. (2018). Meta-learning for semi-supervised few-shot classification. In International Conference on Learning Representations (ICLR 2018). link ↗ | LeCun, Y. & Misra, I. (2022). Self-supervised learning: The dark matter of intelligence. Meta AI Blog. https://ai.facebook.com/blog/self-supervised-learning-the-dark-matter-of-intelligence/ link ↗ |
| Други названия | SS-FSL, semi-supervised meta-learning, few-shot learning with unlabeled data, low-label few-shot learning | SSL, self-supervised pre-training, pretext-task learning, unsupervised representation learning |
| Свързани≠ | 4 | 3 |
| Резюме≠ | Semi-supervised Few-shot Learning (SS-FSL) trains models to classify new classes from only a handful of labeled examples per class, while simultaneously leveraging a pool of unlabeled data to enrich class representations. By combining meta-learning episodes with soft pseudo-label assignment for unlabeled samples, it achieves notably higher accuracy than purely supervised few-shot methods when abundant unlabeled data is available. | Self-supervised learning (SSL) is a machine-learning paradigm that generates its own supervisory signal directly from unlabeled data by defining an auxiliary pretext task — such as predicting masked words, rotating images, or contrasting augmented views — and uses the learned representations as a powerful starting point for downstream tasks with minimal labeled examples. |
| ScholarGateНабор от данни ↗ |
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