Rule Based Ensembles Using Pair Wise Neural Network Classifiers

Автор: Moslem Mohammadi Jenghara, Hossein Ebrahimpour-Komleh

Журнал: International Journal of Intelligent Systems and Applications(IJISA) @ijisa

Статья в выпуске: 4 vol.7, 2015 года.

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In value estimation, the inexperienced people's estimation average is good approximation to true value, provided that the answer of these individual are independent. Classifier ensemble is the implementation of mentioned principle in classification tasks that are investigated in two aspects. In the first aspect, feature space is divided into several local regions and each region is assigned with a highly competent classifier and in the second, the base classifiers are applied in parallel and equally experienced in some ways to achieve a group consensus. In this paper combination of two methods are used. An important consideration in classifier combination is that much better results can be achieved if diverse classifiers, rather than similar classifiers, are combined. To achieve diversity in classifiers output, the symmetric pairwise weighted feature space is used and the outputs of trained classifiers over the weighted feature space are combined to inference final result. In this paper MLP classifiers are used as the base classifiers. The Experimental results show that the applied method is promising.

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Classifier Ensemble, Pair Wise Classifiers, Rule Based Ensemble, Neural Network, Classifier Combination

Короткий адрес: https://sciup.org/15010678

IDR: 15010678

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