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MCS
2001
Springer

Input Decimation Ensembles: Decorrelation through Dimensionality Reduction

13 years 9 months ago
Input Decimation Ensembles: Decorrelation through Dimensionality Reduction
Using an ensemble of classifiers instead of a single classifier has been shown to improve generalization performance in many machine learning problems [4, 16]. However, the extent of such improvement depends greatly on the amount of correlation among the errors of the base classifiers [1, 14]. As such, reducing those correlations while keeping the base classifiers’ performance levels high is a promising research topic. In this paper, we describe input decimation, a method that decouples the base classifiers by training them with different subsets of the input features. In past work [15], we showed the theoretical benefits of input decimation and presented its application to a handful of real data sets. In this paper, we provide a systematic study of input decimation on synthetic data sets and analyze how the interaction between correlation and performance in base classifiers affects ensemble performance.
Nikunj C. Oza, Kagan Tumer
Added 30 Jul 2010
Updated 30 Jul 2010
Type Conference
Year 2001
Where MCS
Authors Nikunj C. Oza, Kagan Tumer
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