dc.description.abstract |
The fact that reflects the cancer research
consequences shows that still there are improvements that
should be investigated in the stream of cancer in future.
This leads the researchers to actively involve further in
cancer research field. As an invention, a hybrid machine
learning method is proposed in this study where two
filters are assessed along with a wrapper approach.
Typically, filters prioritize the features while, wrappers
contribute in subset identification. Though both filters
and wrappers exist independently, the excellent results
they produce when applied subsequently. The wrapperfilter combination plays a major role in feature selection.
Yet, incorporating with a best strategy for feature space
analysis is crucial in this concern. Thus, we introduce the
Evolutionary Algorithm in the proposed study to search
through the feature space for informative gene subset
selection. Though there are several gene selection
approaches for cancer classification, many of them suffer
from law classification accuracy and huge gene subset for
prediction. Hence, we propose Evolutionary Algorithm to
overcome this problem. The proposed approach is
evaluated on five microarray datasets, where three out of
them provide 100% accuracy. Regardless the number of
genes selected, both filters provide the same performance
throughout the datasets used. As a consequence, the
Evolutionary Algorithm in feature space search is
highlighted for its performance in gene subset selection. |
en_US |