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Added rbf_inv.py kernel which is parametrised with the variances
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@ -5,6 +5,23 @@ import numpy as np
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from kern import kern
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import parts
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def rbf_inv(input_dim,variance=1., inv_lengthscale=None,ARD=False):
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"""
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Construct an RBF kernel
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:param input_dim: dimensionality of the kernel, obligatory
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:type input_dim: int
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:param variance: the variance of the kernel
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:type variance: float
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:param lengthscale: the lengthscale of the kernel
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:type lengthscale: float
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:param ARD: Auto Relevance Determination (one lengthscale per dimension)
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:type ARD: Boolean
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"""
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part = parts.rbf_inv.RBFInv(input_dim,variance,inv_lengthscale,ARD)
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return kern(input_dim, [part])
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def rbf(input_dim,variance=1., lengthscale=None,ARD=False):
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"""
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Construct an RBF kernel
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@ -20,3 +20,4 @@ import spline
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import symmetric
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import white
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import hierarchical
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import rbf_inv
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