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1 % Netlab Toolbox
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2 % Version 3.3.1 18-Jun-2004
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3 %
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4 % conffig - Display a confusion matrix.
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5 % confmat - Compute a confusion matrix.
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6 % conjgrad - Conjugate gradients optimization.
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7 % consist - Check that arguments are consistent.
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8 % convertoldnet- Convert pre-2.3 release MLP and MDN nets to new format
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9 % datread - Read data from an ascii file.
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10 % datwrite - Write data to ascii file.
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11 % dem2ddat - Generates two dimensional data for demos.
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12 % demard - Automatic relevance determination using the MLP.
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13 % demev1 - Demonstrate Bayesian regression for the MLP.
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14 % demev2 - Demonstrate Bayesian classification for the MLP.
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15 % demev3 - Demonstrate Bayesian regression for the RBF.
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16 % demgauss - Demonstrate sampling from Gaussian distributions.
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17 % demglm1 - Demonstrate simple classification using a generalized linear model.
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18 % demglm2 - Demonstrate simple classification using a generalized linear model.
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19 % demgmm1 - Demonstrate density modelling with a Gaussian mixture model.
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20 % demgmm3 - Demonstrate density modelling with a Gaussian mixture model.
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21 % demgmm4 - Demonstrate density modelling with a Gaussian mixture model.
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22 % demgmm5 - Demonstrate density modelling with a PPCA mixture model.
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23 % demgp - Demonstrate simple regression using a Gaussian Process.
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24 % demgpard - Demonstrate ARD using a Gaussian Process.
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25 % demgpot - Computes the gradient of the negative log likelihood for a mixture model.
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26 % demgtm1 - Demonstrate EM for GTM.
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27 % demgtm2 - Demonstrate GTM for visualisation.
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28 % demhint - Demonstration of Hinton diagram for 2-layer feed-forward network.
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29 % demhmc1 - Demonstrate Hybrid Monte Carlo sampling on mixture of two Gaussians.
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30 % demhmc2 - Demonstrate Bayesian regression with Hybrid Monte Carlo sampling.
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31 % demhmc3 - Demonstrate Bayesian regression with Hybrid Monte Carlo sampling.
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32 % demkmean - Demonstrate simple clustering model trained with K-means.
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33 % demknn1 - Demonstrate nearest neighbour classifier.
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34 % demmdn1 - Demonstrate fitting a multi-valued function using a Mixture Density Network.
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35 % demmet1 - Demonstrate Markov Chain Monte Carlo sampling on a Gaussian.
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36 % demmlp1 - Demonstrate simple regression using a multi-layer perceptron
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37 % demmlp2 - Demonstrate simple classification using a multi-layer perceptron
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38 % demnlab - A front-end Graphical User Interface to the demos
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39 % demns1 - Demonstrate Neuroscale for visualisation.
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40 % demolgd1 - Demonstrate simple MLP optimisation with on-line gradient descent
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41 % demopt1 - Demonstrate different optimisers on Rosenbrock's function.
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42 % dempot - Computes the negative log likelihood for a mixture model.
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43 % demprgp - Demonstrate sampling from a Gaussian Process prior.
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44 % demprior - Demonstrate sampling from a multi-parameter Gaussian prior.
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45 % demrbf1 - Demonstrate simple regression using a radial basis function network.
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46 % demsom1 - Demonstrate SOM for visualisation.
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47 % demtrain - Demonstrate training of MLP network.
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48 % dist2 - Calculates squared distance between two sets of points.
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49 % eigdec - Sorted eigendecomposition
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50 % errbayes - Evaluate Bayesian error function for network.
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51 % evidence - Re-estimate hyperparameters using evidence approximation.
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52 % fevbayes - Evaluate Bayesian regularisation for network forward propagation.
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53 % gauss - Evaluate a Gaussian distribution.
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54 % gbayes - Evaluate gradient of Bayesian error function for network.
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55 % glm - Create a generalized linear model.
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56 % glmderiv - Evaluate derivatives of GLM outputs with respect to weights.
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57 % glmerr - Evaluate error function for generalized linear model.
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58 % glmevfwd - Forward propagation with evidence for GLM
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59 % glmfwd - Forward propagation through generalized linear model.
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60 % glmgrad - Evaluate gradient of error function for generalized linear model.
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61 % glmhess - Evaluate the Hessian matrix for a generalised linear model.
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62 % glminit - Initialise the weights in a generalized linear model.
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63 % glmpak - Combines weights and biases into one weights vector.
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64 % glmtrain - Specialised training of generalized linear model
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65 % glmunpak - Separates weights vector into weight and bias matrices.
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66 % gmm - Creates a Gaussian mixture model with specified architecture.
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67 % gmmactiv - Computes the activations of a Gaussian mixture model.
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68 % gmmem - EM algorithm for Gaussian mixture model.
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69 % gmminit - Initialises Gaussian mixture model from data
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70 % gmmpak - Combines all the parameters in a Gaussian mixture model into one vector.
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71 % gmmpost - Computes the class posterior probabilities of a Gaussian mixture model.
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72 % gmmprob - Computes the data probability for a Gaussian mixture model.
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73 % gmmsamp - Sample from a Gaussian mixture distribution.
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74 % gmmunpak - Separates a vector of Gaussian mixture model parameters into its components.
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75 % gp - Create a Gaussian Process.
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76 % gpcovar - Calculate the covariance for a Gaussian Process.
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77 % gpcovarf - Calculate the covariance function for a Gaussian Process.
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78 % gpcovarp - Calculate the prior covariance for a Gaussian Process.
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79 % gperr - Evaluate error function for Gaussian Process.
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80 % gpfwd - Forward propagation through Gaussian Process.
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81 % gpgrad - Evaluate error gradient for Gaussian Process.
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82 % gpinit - Initialise Gaussian Process model.
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83 % gppak - Combines GP hyperparameters into one vector.
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84 % gpunpak - Separates hyperparameter vector into components.
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85 % gradchek - Checks a user-defined gradient function using finite differences.
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86 % graddesc - Gradient descent optimization.
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87 % gsamp - Sample from a Gaussian distribution.
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88 % gtm - Create a Generative Topographic Map.
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89 % gtmem - EM algorithm for Generative Topographic Mapping.
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90 % gtmfwd - Forward propagation through GTM.
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91 % gtminit - Initialise the weights and latent sample in a GTM.
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92 % gtmlmean - Mean responsibility for data in a GTM.
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93 % gtmlmode - Mode responsibility for data in a GTM.
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94 % gtmmag - Magnification factors for a GTM
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95 % gtmpost - Latent space responsibility for data in a GTM.
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96 % gtmprob - Probability for data under a GTM.
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97 % hbayes - Evaluate Hessian of Bayesian error function for network.
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98 % hesschek - Use central differences to confirm correct evaluation of Hessian matrix.
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99 % hintmat - Evaluates the coordinates of the patches for a Hinton diagram.
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100 % hinton - Plot Hinton diagram for a weight matrix.
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101 % histp - Histogram estimate of 1-dimensional probability distribution.
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102 % hmc - Hybrid Monte Carlo sampling.
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103 % kmeans - Trains a k means cluster model.
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104 % knn - Creates a K-nearest-neighbour classifier.
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105 % knnfwd - Forward propagation through a K-nearest-neighbour classifier.
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106 % linef - Calculate function value along a line.
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107 % linemin - One dimensional minimization.
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108 % maxitmess- Create a standard error message when training reaches max. iterations.
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109 % mdn - Creates a Mixture Density Network with specified architecture.
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110 % mdn2gmm - Converts an MDN mixture data structure to array of GMMs.
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111 % mdndist2 - Calculates squared distance between centres of Gaussian kernels and data
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112 % mdnerr - Evaluate error function for Mixture Density Network.
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113 % mdnfwd - Forward propagation through Mixture Density Network.
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114 % mdngrad - Evaluate gradient of error function for Mixture Density Network.
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115 % mdninit - Initialise the weights in a Mixture Density Network.
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116 % mdnpak - Combines weights and biases into one weights vector.
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117 % mdnpost - Computes the posterior probability for each MDN mixture component.
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118 % mdnprob - Computes the data probability likelihood for an MDN mixture structure.
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119 % mdnunpak - Separates weights vector into weight and bias matrices.
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120 % metrop - Markov Chain Monte Carlo sampling with Metropolis algorithm.
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121 % minbrack - Bracket a minimum of a function of one variable.
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122 % mlp - Create a 2-layer feedforward network.
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123 % mlpbkp - Backpropagate gradient of error function for 2-layer network.
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124 % mlpderiv - Evaluate derivatives of network outputs with respect to weights.
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125 % mlperr - Evaluate error function for 2-layer network.
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126 % mlpevfwd - Forward propagation with evidence for MLP
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127 % mlpfwd - Forward propagation through 2-layer network.
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128 % mlpgrad - Evaluate gradient of error function for 2-layer network.
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129 % mlphdotv - Evaluate the product of the data Hessian with a vector.
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130 % mlphess - Evaluate the Hessian matrix for a multi-layer perceptron network.
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131 % mlphint - Plot Hinton diagram for 2-layer feed-forward network.
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132 % mlpinit - Initialise the weights in a 2-layer feedforward network.
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133 % mlppak - Combines weights and biases into one weights vector.
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134 % mlpprior - Create Gaussian prior for mlp.
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135 % mlptrain - Utility to train an MLP network for demtrain
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136 % mlpunpak - Separates weights vector into weight and bias matrices.
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137 % netderiv - Evaluate derivatives of network outputs by weights generically.
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138 % neterr - Evaluate network error function for generic optimizers
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139 % netevfwd - Generic forward propagation with evidence for network
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140 % netgrad - Evaluate network error gradient for generic optimizers
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141 % nethess - Evaluate network Hessian
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142 % netinit - Initialise the weights in a network.
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143 % netopt - Optimize the weights in a network model.
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144 % netpak - Combines weights and biases into one weights vector.
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145 % netunpak - Separates weights vector into weight and bias matrices.
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146 % olgd - On-line gradient descent optimization.
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147 % pca - Principal Components Analysis
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148 % plotmat - Display a matrix.
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149 % ppca - Probabilistic Principal Components Analysis
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150 % quasinew - Quasi-Newton optimization.
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151 % rbf - Creates an RBF network with specified architecture
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152 % rbfbkp - Backpropagate gradient of error function for RBF network.
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153 % rbfderiv - Evaluate derivatives of RBF network outputs with respect to weights.
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154 % rbferr - Evaluate error function for RBF network.
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155 % rbfevfwd - Forward propagation with evidence for RBF
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156 % rbffwd - Forward propagation through RBF network with linear outputs.
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157 % rbfgrad - Evaluate gradient of error function for RBF network.
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158 % rbfhess - Evaluate the Hessian matrix for RBF network.
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159 % rbfjacob - Evaluate derivatives of RBF network outputs with respect to inputs.
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160 % rbfpak - Combines all the parameters in an RBF network into one weights vector.
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161 % rbfprior - Create Gaussian prior and output layer mask for RBF.
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162 % rbfsetbf - Set basis functions of RBF from data.
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163 % rbfsetfw - Set basis function widths of RBF.
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164 % rbftrain - Two stage training of RBF network.
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165 % rbfunpak - Separates a vector of RBF weights into its components.
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166 % rosegrad - Calculate gradient of Rosenbrock's function.
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167 % rosen - Calculate Rosenbrock's function.
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168 % scg - Scaled conjugate gradient optimization.
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169 % som - Creates a Self-Organising Map.
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170 % somfwd - Forward propagation through a Self-Organising Map.
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171 % sompak - Combines node weights into one weights matrix.
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172 % somtrain - Kohonen training algorithm for SOM.
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173 % somunpak - Replaces node weights in SOM.
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174 %
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175 % Copyright (c) Ian T Nabney (1996-2001)
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176 %
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