Extensions to Cascade-Correlation Training
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چکیده
We report on results of experiments using several variations of CascadeCorrelation. The first examines the application of patience parameters to the addition of hidden nodes with the aim of halting network training. The other techniques involve altering standard candidate training: both training candidates in subgroups of the same node style and training candidates individually, instead of training the whole candidate pool.
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تاریخ انتشار 1994