Compară metode
Examinează metodele selectate una lângă alta; rândurile care diferă sunt evidențiate.
| Învățare prin transfer× | Învățare cu puține exemple× | Învățare auto-supervizată× | Învățare semi-supervizată× | |
|---|---|---|---|---|
| Domeniu | Învățare automată | Învățare automată | Învățare automată | Învățare automată |
| Familie | Machine learning | Machine learning | Machine learning | Machine learning |
| Anul apariției≠ | 2010 (formalized); 1990s (early roots) | 2011–2017 | 2018–2020 | 1970s–2006 (formalized) |
| Autorul original≠ | Pan, S. J. & Yang, Q. (survey); Bengio, Y. (deep learning framing) | Lake, B. M.; Vinyals, O.; Finn, C. et al. | LeCun, Y. and community (formalized ~2018–2020) | Vapnik, V. N. and others (community of researchers, 1970s–2000s) |
| Tip≠ | Learning paradigm | Meta-learning / low-data learning paradigm | Representation learning paradigm | Learning paradigm |
| Sursa seminală≠ | Pan, S. J., & Yang, Q. (2010). A Survey on Transfer Learning. IEEE Transactions on Knowledge and Data Engineering, 22(10), 1345–1359. DOI ↗ | Vinyals, O., Blundell, C., Lillicrap, T., Wierstra, D., & Kavukcuoglu, K. (2016). Matching Networks for One Shot Learning. Advances in Neural Information Processing Systems (NeurIPS), 29. 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 ↗ | Chapelle, O., Scholkopf, B., & Zien, A. (Eds.) (2006). Semi-Supervised Learning. MIT Press. ISBN: 978-0-262-03358-9 |
| Denumiri alternative | TL, domain adaptation, fine-tuning, pre-trained model adaptation | FSL, low-shot learning, k-shot learning, meta-learning for few examples | SSL, self-supervised pre-training, pretext-task learning, unsupervised representation learning | SSL, semi-supervised machine learning, transductive learning, label-efficient learning |
| Înrudite≠ | 3 | 4 | 3 | 5 |
| Rezumat≠ | Transfer learning is a machine learning paradigm in which knowledge gained from training a model on a source task or domain is reused to improve learning on a different but related target task or domain. It is especially powerful when labeled data for the target task is scarce, and it underlies most modern deep learning applications in computer vision, natural language processing, and beyond. | Few-shot learning is a machine learning paradigm that trains models to recognize new classes or solve new tasks from only a handful of labeled examples — typically one to five — by leveraging prior knowledge acquired from a large, related training distribution. It is especially relevant in domains where labeling is expensive, scarce, or structurally limited. | 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. | Semi-supervised learning (SSL) is a machine learning paradigm that trains models using a small set of labeled examples together with a much larger pool of unlabeled data. By leveraging the structure inherent in unlabeled data, SSL achieves accuracy closer to fully supervised models while requiring far fewer costly manual labels — making it practical when labeling is expensive, slow, or resource-constrained. |
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