Learning Feature Representations with K-Means

@inproceedings{Coates2012LearningFR,
  title={Learning Feature Representations with K-Means},
  author={Adam Coates and Andrew Y. Ng},
  booktitle={Neural Networks: Tricks of the Trade},
  year={2012}
}
Many algorithms are available to learn deep hierarchies of features from unlabeled data, especially images. In many cases, these algorithms involve multi-layered networks of features (e.g., neural networks) that are sometimes tricky to train and tune and are difficult to scale up to many machines effectively. Recently, it has been found that K-means clustering can be used as a fast alternative training method. The main advantage of this approach is that it is very fast and easily implemented at… CONTINUE READING
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