Plugins

Plugins are a set of components that affect how other components behave.

These are the existing types of plugin:


Common Input and Output Converter Properties

Both the input and output converter plugins have one common property.

Center on Zero

This input plugin centers the data evenly around the zero point. That is, it subtracts the average of the data from each item.

Normalizer

This input plugin normalizes the data linearly between two bounds.
The extra properties that can be set for normalizer plugins: Note :

Setting both "In Data Max" and "In Data Min" to 0 will instruct the plugin to search for the upper (max) and lower (min) bound of the data.


Turning Points Extractor

This input plugin extracts the turning points of a time series. It generates a Boolean a signal that detects relative minima and maxima.
The extra property that can be set for turning point extractor plugins:

Moving Average Converter

Changes the specified input serie data so that it becomes a moving average of itself.

This plugin operates on specified columns or serie of data in a vertical fashion. The converter calculates the moving average of a column i.e vertically. The data in the column is converted so that it becomes a moving average of itself. If you chose a 3 row moving average then the first 2 rows will be set to 0 and the third and subsequent rows are set to the 3 row moving average.


For example if the serie to be converted contained the following data ....

5
15
6
8

and the requested moving average was set at 3 then the serie would become ..

0
0
8.67
9.67

So the column's rows are set to the sum of the previous two values and the current value divided by 3.

The extra properties that should be specified by in this converter are ...


Delta Norm Plugin

This plugin is used to calculate the normalized differences between the actual data and past values of a time series.
Used along with the TurningPointExtractor plugin is very useful to build time series signal generators.

Shuffler Plugin


This plugin 'shuffles' the input rows at every epoch, permitting to train a neural network with a different patterns' input order for each epoch.

Note:

The Shuffler plugin must be always used in conjunction with the Input Connector component.

Binary Plugin

This plugin converts the input patterns to binary values.

UnNormalizer

This output plugin unnormalizes the data linearly between two bounds.
There are four extra properties that can be set for unnormalizer plugins: Note :

Setting both "In Data Max" and "In Data Min" to 0 will instruct the plugin to search for the upper and lower bound of the data. Typically if a Sigmoid layer is attached to the output layer then these values will be 1.0 and 0.0 respectively. For Tanh then these will be 1.0 and -1.0. For linear it will be Min = bias*(min of previous layer) , Max = bias*(max of previous layer).


Linear Annealing

This monitor plugin affect the control panel learning rate and momentum parameters during the learning phase.
Initial and final values for these parameters can be set, and they will be altered linearly during learning.
This can help to fine tune a network towards the end of its education instead of embarking on radically different configurations.
There are five properties that can be set for linear annealing plugins:

Dynamic Annealing

This monitor plugin affect the control panel learning rate parameter during the learning phase in much the same way as the linear annealing plugin.
The difference is that instead of changing the learning rate in a linear fashion, it reduces it by a percentage only if the error is worse than the previous round's.
This help to reduce the risk of a good configuration being lost as learning proceeds.

There are three properties that can be set for dynamic annealing plugins: