Minor reorganising

This commit is contained in:
Alan Saul 2014-02-11 14:06:42 +00:00
parent 9eef4ebded
commit c76f1a4d6d
3 changed files with 8 additions and 9 deletions

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@ -157,14 +157,14 @@ class Param(ObservableArray, Constrainable, Gradcheckable):
#===========================================================================
def tie_to(self, param):
"""
:param param: the parameter object to tie this parameter to.
:param param: the parameter object to tie this parameter to.
Can be ParamConcatenation (retrieved by regexp search)
Tie this parameter to the given parameter.
Broadcasting is not allowed, but you can tie a whole dimension to
one parameter: self[:,0].tie_to(other), where other is a one-value
parameter.
Note: For now only one parameter can have ties, so all of a parameter
will be removed, when re-tieing!
"""
@ -534,7 +534,7 @@ class ParamConcatenation(object):
def checkgrad(self, verbose=0, step=1e-6, tolerance=1e-3):
return self.params[0]._highest_parent_._checkgrad(self, verbose, step, tolerance)
#checkgrad.__doc__ = Gradcheckable.checkgrad.__doc__
__lt__ = lambda self, val: self._vals() < val
__le__ = lambda self, val: self._vals() <= val
__eq__ = lambda self, val: self._vals() == val

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@ -92,12 +92,11 @@ class LaplaceInference(object):
iteration = 0
while difference > self._mode_finding_tolerance and iteration < self._mode_finding_max_iter:
W = -likelihood.d2logpdf_df2(f, Y, extra_data=Y_metadata)
W_f = W*f
grad = likelihood.dlogpdf_df(f, Y, extra_data=Y_metadata)
W_f = W*f
b = W_f + grad # R+W p46 line 6.
#W12BiW12Kb, B_logdet = self._compute_B_statistics(K, W.copy(), np.dot(K, b), likelihood.log_concave)
W12BiW12, _, _ = self._compute_B_statistics(K, W, likelihood.log_concave)
W12BiW12Kb = np.dot(W12BiW12, np.dot(K, b))

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@ -1,10 +1,10 @@
import numpy as np
import unittest
import GPy
from GPy.models import GradientChecker
from ..models import GradientChecker
import functools
import inspect
from GPy.likelihoods import link_functions
from ..likelihoods import link_functions
from ..core.parameterization import Param
from functools import partial
#np.random.seed(300)