0000000000293652

AUTHOR

M.k. Mohania

showing 1 related works from this author

Diversity in random subspacing ensembles

2004

Ensembles of learnt models constitute one of the main current directions in machine learning and data mining. It was shown experimentally and theoretically that in order for an ensemble to be effective, it should consist of classifiers having diversity in their predictions. A number of ways are known to quantify diversity in ensembles, but little research has been done about their appropriateness. In this paper, we compare eight measures of the ensemble diversity with regard to their correlation with the accuracy improvement due to ensembles. We conduct experiments on 21 data sets from the UCI machine learning repository, comparing the correlations for random subspacing ensembles with diffe…

Computer sciencemedia_common.quotation_subjectAmbiguityEnsemble diversitycomputer.software_genreEnsemble learningData warehouseCorrelationInformation extractionKnowledge extractionStatisticsEntropy (information theory)Data miningcomputermedia_common
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