- Easily building, training and using modular structures of learning algorithms
- A wide variety of state-of-the-art machine learning methods, such as PCA, ICA, SFA, RBMs, ... You can find the full list here.
- Cross-validation of datasets
- Grid-searching large parameter spaces
- Processing of temporal datasets
- Gradient-based training of deep learning architectures
- Interface to the Speech Processing, Recognition, and Automatic Annotation Kit (SPRAAK)
- Reservoir node
- Leaky reservoir node
- Ridge regression node
- Conditional Restricted Boltzmann Machine (CRBM) node
- Perceptron node
There is a general tutorial and examples highlighting some key functions of Oger here. A pdf version of the tutorial pages is here."
http://organic.elis.ugent.be/oger
http://reservoir-computing.org/
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