Rotation-based model trees for classification
Structurally, a model tree is a regression method that takes the form of a decision tree with linear regression functions instead of terminal class values at its leaves. In this study, model trees were coupled with a rotation-based ensemble for solving classification problems. In order to apply this regression technique to classification problems, we considered the conditional class probability function and sought a model-tree approximation to it. During classification, the class whose model tree generated the greatest approximated probability value was chosen as the predicted class. We performed a comparison with other well-known ensembles of decision trees on standard benchmark data sets, and the performance of the proposed technique was greater in most cases.
Year of publication: |
2010
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Authors: | Kotsiantis, S.B. |
Published in: |
International Journal of Data Analysis Techniques and Strategies. - Inderscience Enterprises Ltd, ISSN 1755-8050. - Vol. 2.2010, 1, p. 22-37
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Publisher: |
Inderscience Enterprises Ltd |
Subject: | machine learning | classifier ensembles | combining models | model trees | classification | decision trees | rotation-based ensemble |
Saved in:
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