Semi-Supervised Learning
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- A combination of labelled and unlabelled data.
- Useful when labelling large datasets is expensive or time-consuming.
- Works well with high-volume datasets (e.g. millions of images).
- Only a small fraction of data is labelled (e.g. a few thousand).
- The algorithm learns from both labelled examples and structure in unlabelled data.
- Ideal for medical imaging where labelled data is limited.
- For example, a radiologist can label a small set of medical scans,
and the model uses that to learn from thousands of unlabelled scans. - Helps improve accuracy and generalisation with minimal manual effort.
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