2006
DOI: 10.5485/tmcs.2006.0109
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An improvement of the classification algorithm results

Abstract: One of the most important aspects of the precision of a classification is the suitable selection of a classification algorithm and a training set for a given task. Basic principles of machine learning can be used for this selection [3]. In this paper, we have focused on improving the precision of classification algorithms results. Two kinds of approaches are known: Boosting and Bagging. This paper describes the use of the first method-boosting [6] which aims at algorithms generating decision trees. A modificat… Show more

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