Résumé
We present a novel cost function for semi-supervised learning of neural networks that encourages compact clustering of the latent space to facilitate separation. The key idea is to dynamically create a graph over embeddings of labeled and unlabeled samples of a training batch to capture underlying structure in feature space, and use label propagation to estimate its high and low density regions. We then devise a cost function based on Markov chains on the graph that regularizes the latent space to form a single compact cluster per class, while avoiding to disturb existing clusters during optimization. We evaluate our approach on three benchmarks and compare to state-of-the art with promising results. Our approach combines the benefits of graph-based regularization with efficient, inductive inference, does not require modifications to a network architecture, and can thus be easily applied to existing networks to enable an effective use of unlabeled data.
| langue originale | Anglais |
|---|---|
| Pages (de - à) | 2459-2468 |
| Nombre de pages | 10 |
| journal | Proceedings of Machine Learning Research |
| Volume | 80 |
| état | Publié - 1 janv. 2018 |
| Modification externe | Oui |
| Evénement | 35th International Conference on Machine Learning, ICML 2018 - Stockholm, Sucde Durée: 10 juil. 2018 → 15 juil. 2018 |
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