Semi-Supervised Image Classification (Cold Start)
This is the same as the semi-supervised image classification task, with the key difference being that the labelled subset chosen needs to be selection in a class agnostic manner. This means that the standard practice in semi-supervised learning of using a random class stratified sample is "cheating" in this case, as class information is required for the whole dataset for this to be done. Rather, this challenge requires a smart cold-start or unsupervised selective labelling strategy to identify images that are most informative and result in the best performing models.
Papers
Showing 1–1 of 1 papers
| Title | Status | Hype |
|---|---|---|
| Unsupervised Selective Labeling for More Effective Semi-Supervised Learning | Code | 1 |
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