get_prep_info_class_mlp
— Compute the information content of the preprocessed feature vectors
of a multilayer perceptron.
get_prep_info_class_mlp( : : MLPHandle, Preprocessing : InformationCont, CumInformationCont)
get_prep_info_class_mlp
computes the information content of
the training vectors that have been transformed with the
preprocessing given by Preprocessing
.
Preprocessing
can be set to 'principal_components'
or 'canonical_variates' . The preprocessing methods are
described with create_class_mlp
. The information content is
derived from the variations of the transformed components of the
feature vector, i.e., it is computed solely based on the training
data, independent of any error rate on the training data. The
information content is computed for all relevant components of the
transformed feature vectors (NumInput
for
'principal_components' and min(NumOutput
- 1,
NumInput
) for 'canonical_variates' , see
create_class_mlp
), and is returned in
InformationCont
as a number between 0 and 1. To convert
the information content into a percentage, it simply needs to be
multiplied by 100. The cumulative information content of the first
n components is returned in the n-th component of
CumInformationCont
, i.e., CumInformationCont
contains the sums of the first n elements of
InformationCont
. To use get_prep_info_class_mlp
, a
sufficient number of samples must be added to the multilayer
perceptron (MLP) given by MLPHandle
by using
add_sample_class_mlp
or read_samples_class_mlp
.
InformationCont
and CumInformationCont
can be used
to decide how many components of the transformed feature vectors
contain relevant information. An often used criterion is to require
that the transformed data must represent x% (e.g., 90%) of the
data. This can be decided easily from the first value of
CumInformationCont
that lies above x%. The number thus
obtained can be used as the value for NumComponents
in a
new call to create_class_mlp
. The call to
get_prep_info_class_mlp
already requires the creation of an
MLP, and hence the setting of NumComponents
in
create_class_mlp
to an initial value. However, if
get_prep_info_class_mlp
is called it is typically not known
how many components are relevant, and hence how to set
NumComponents
in this call. Therefore, the following
two-step approach should typically be used to select
NumComponents
: In a first step, an MLP with the maximum
number for NumComponents
is created (NumInput
for
'principal_components' and min(NumOutput
- 1,
NumInput
) for 'canonical_variates' ). Then, the
training samples are added to the MLP and are saved in a file using
write_samples_class_mlp
. Subsequently,
get_prep_info_class_mlp
is used to determine the information
content of the components, and with this NumComponents
.
After this, a new MLP with the desired number of components is
created, and the training samples are read with
read_samples_class_mlp
. Finally, the MLP is trained with
train_class_mlp
.
MLPHandle
(input_control) class_mlp →
(handle)
MLP handle.
Preprocessing
(input_control) string →
(string)
Type of preprocessing used to transform the feature vectors.
Default value: 'principal_components'
List of values: 'canonical_variates' , 'principal_components'
InformationCont
(output_control) real-array →
(real)
Relative information content of the transformed feature vectors.
CumInformationCont
(output_control) real-array →
(real)
Cumulative information content of the transformed feature vectors.
* Create the initial MLP create_class_mlp (NumIn, NumHidden, NumOut, 'softmax', \ 'principal_components', NumIn, 42, MLPHandle) * Generate and add the training data for J := 0 to NumData-1 by 1 * Generate training features and classes * Data = [...] * Class = [...] add_sample_class_mlp (MLPHandle, Data, Class) endfor write_samples_class_mlp (MLPHandle, 'samples.mtf') * Compute the information content of the transformed features get_prep_info_class_mlp (MLPHandle, 'principal_components',\ InformationCont, CumInformationCont) * Determine NumComp by inspecting InformationCont and CumInformationCont * NumComp = [...] * Create the actual MLP create_class_mlp (NumIn, NumHidden, NumOut, 'softmax', \ 'principal_components', NumComp, 42, MLPHandle) * Train the MLP read_samples_class_mlp (MLPHandle, 'samples.mtf') train_class_mlp (MLPHandle, 100, 1, 0.01, Error, ErrorLog) write_class_mlp (MLPHandle, 'classifier.mlp')
If the parameters are valid, the operator
get_prep_info_class_mlp
returns the value 2 (H_MSG_TRUE). If
necessary an exception is raised.
get_prep_info_class_mlp
may return the error 9211 (Matrix is
not positive definite) if Preprocessing
=
'canonical_variates' is used. This typically indicates
that not enough training samples have been stored for each class.
add_sample_class_mlp
,
read_samples_class_mlp
clear_class_mlp
,
create_class_mlp
Christopher M. Bishop: “Neural Networks for Pattern Recognition”;
Oxford University Press, Oxford; 1995.
Andrew Webb: “Statistical Pattern Recognition”; Arnold, London;
1999.
Foundation