A measure of competence based on randomized reference classifier for dynamic ensemble selection

This paper presents a measure of competence based on a randomized reference classifier (RRC) for classifier ensembles. The RRC can be used to model, in terms of class supports, any classifier in the ensemble. The competence of a modelled classifier is calculated as the probability of correct classif...

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Main Authors: Woloszynski, Tomasz, Kurzynski, M.
Format: Conference Paper
Published: 2010
Online Access:http://hdl.handle.net/20.500.11937/37118
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author Woloszynski, Tomasz
Kurzynski, M.
author_facet Woloszynski, Tomasz
Kurzynski, M.
author_sort Woloszynski, Tomasz
building Curtin Institutional Repository
collection Online Access
description This paper presents a measure of competence based on a randomized reference classifier (RRC) for classifier ensembles. The RRC can be used to model, in terms of class supports, any classifier in the ensemble. The competence of a modelled classifier is calculated as the probability of correct classification of the respective RRC. A multiple classifier system (MCS) was developed and its performance was compared against five MCSs using eight databases taken from the UCI Machine Learning Repository. The system developed achieved the highest overall classification accuracies for both homogeneous and heterogeneous ensembles. © 2010 IEEE.
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institution Curtin University Malaysia
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publishDate 2010
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spelling curtin-20.500.11937-371182017-09-13T13:59:39Z A measure of competence based on randomized reference classifier for dynamic ensemble selection Woloszynski, Tomasz Kurzynski, M. This paper presents a measure of competence based on a randomized reference classifier (RRC) for classifier ensembles. The RRC can be used to model, in terms of class supports, any classifier in the ensemble. The competence of a modelled classifier is calculated as the probability of correct classification of the respective RRC. A multiple classifier system (MCS) was developed and its performance was compared against five MCSs using eight databases taken from the UCI Machine Learning Repository. The system developed achieved the highest overall classification accuracies for both homogeneous and heterogeneous ensembles. © 2010 IEEE. 2010 Conference Paper http://hdl.handle.net/20.500.11937/37118 10.1109/ICPR.2010.1019 restricted
spellingShingle Woloszynski, Tomasz
Kurzynski, M.
A measure of competence based on randomized reference classifier for dynamic ensemble selection
title A measure of competence based on randomized reference classifier for dynamic ensemble selection
title_full A measure of competence based on randomized reference classifier for dynamic ensemble selection
title_fullStr A measure of competence based on randomized reference classifier for dynamic ensemble selection
title_full_unstemmed A measure of competence based on randomized reference classifier for dynamic ensemble selection
title_short A measure of competence based on randomized reference classifier for dynamic ensemble selection
title_sort measure of competence based on randomized reference classifier for dynamic ensemble selection
url http://hdl.handle.net/20.500.11937/37118