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Expand input space with Gaussian Radial Basis Functions (RBFs). The input data is filtered through a set of unnormalized Gaussian filters, i.e.:: y_j = exp(-0.5/s_j * ||x - c_j||^2) for isotropic RBFs, or more in general:: y_j = exp(-0.5 * (x-c_j)^T S^-1 (x-c_j)) for anisotropic RBFs.
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_train_seq List of tuples:: |
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dtype dtype |
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input_dim Input dimensions |
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output_dim Output dimensions |
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supported_dtypes Supported dtypes |
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:Arguments:
centers
Centers of the RBFs. The dimensionality
of the centers determines the input dimensionality;
the number of centers determines the output
dimensionalities
sizes
Radius of the RBFs.
``sizes`` is a list with one element for each RBF, either
a scalar (the variance of the RBFs for isotropic RBFs)
or a covariance matrix (for anisotropic RBFs).
If ``sizes`` is not a list, the same variance/covariance
is used for all RBFs.
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Process the data contained in `x`. If the object is still in the training phase, the function `stop_training` will be called. `x` is a matrix having different variables on different columns and observations on the rows. By default, subclasses should overwrite `_execute` to implement their execution phase. The docstring of the `_execute` method overwrites this docstring.
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Return True if the node can be inverted, False otherwise.
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Return True if the node can be trained, False otherwise.
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