controlled cooperative algorithm in solving real
world optimization problems.
6 CONCLUSIONS
The problem of semi-supervised classification is
important due to the fact that obtaining labelled
examples is often very expensive. However, using
this data during classification may be helpful. In this
paper, the semi-supervised SVM was trained using a
cooperative algorithm, whose components were
automatically adjusted by a fuzzy controller. The
fuzzy controller itself was tuned to deliver better
results for constrained optimization problems. This
tuning of the meta-heuristic allowed better results of
SVM training to be achieved, compared to other
studies. The proposed approach, combining biology-
related algorithms and fuzzy controllers could be
applied to other complex constrained optimization
problems.
ACKNOWLEDGEMENTS
Research is performed with the support of the
Ministry of Education and Science of Russian
Federation within State Assignment project №
2.1680.2017/ПЧ.
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