Classification for breast cancer diagnosis using adaboost

Boosting is a general method that can be applied on any learning algorithm to improve its performance. Throughout the evolution of boosting-based algorithms, the term “weak leaner” has always been mentioned. Literally it refers to weak learning algorithms that perform just slightly better than ra...

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Main Authors: Lih Heng, Chan, Shaikh Salleh, Sheikh Hussain
Format: Book Section
Published: Penerbit UTM 2007
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Online Access:http://eprints.utm.my/id/eprint/13414/
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Institution: Universiti Teknologi Malaysia
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spelling my.utm.134142011-08-15T05:26:24Z http://eprints.utm.my/id/eprint/13414/ Classification for breast cancer diagnosis using adaboost Lih Heng, Chan Shaikh Salleh, Sheikh Hussain RZ Other systems of medicine Boosting is a general method that can be applied on any learning algorithm to improve its performance. Throughout the evolution of boosting-based algorithms, the term “weak leaner” has always been mentioned. Literally it refers to weak learning algorithms that perform just slightly better than random guess. Schapire R.E. (1990) showed that these so-called weak learners can be efficiently combined or “boosted” to build a strong accurate classifier. This boosting algorithm applies weak learning algorithms multiple times to instance space with different distribution, and finally construct a strong hypothesis from numerous weak hypotheses Freund, Y. et al., (1997) first introduced theoretically the adaptive boosting (AdaBoost) method which significantly reduces the error of any learning algorithm that consistently generates classifiers with the condition of that: “better than random guess”. In AdaBoost algorithms, distribution over instance space of training set are adjusted adaptively to the errors of weak hypotheses. This helps to move the weak learner towards the “harder” part of classification space more efficiently. Penerbit UTM 2007 Book Section PeerReviewed Lih Heng, Chan and Shaikh Salleh, Sheikh Hussain (2007) Classification for breast cancer diagnosis using adaboost. In: Recent Advancement In Biomedical Engineering. Penerbit UTM , Johor, pp. 50-62. ISBN 978-983-52-0559-0
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic RZ Other systems of medicine
spellingShingle RZ Other systems of medicine
Lih Heng, Chan
Shaikh Salleh, Sheikh Hussain
Classification for breast cancer diagnosis using adaboost
description Boosting is a general method that can be applied on any learning algorithm to improve its performance. Throughout the evolution of boosting-based algorithms, the term “weak leaner” has always been mentioned. Literally it refers to weak learning algorithms that perform just slightly better than random guess. Schapire R.E. (1990) showed that these so-called weak learners can be efficiently combined or “boosted” to build a strong accurate classifier. This boosting algorithm applies weak learning algorithms multiple times to instance space with different distribution, and finally construct a strong hypothesis from numerous weak hypotheses Freund, Y. et al., (1997) first introduced theoretically the adaptive boosting (AdaBoost) method which significantly reduces the error of any learning algorithm that consistently generates classifiers with the condition of that: “better than random guess”. In AdaBoost algorithms, distribution over instance space of training set are adjusted adaptively to the errors of weak hypotheses. This helps to move the weak learner towards the “harder” part of classification space more efficiently.
format Book Section
author Lih Heng, Chan
Shaikh Salleh, Sheikh Hussain
author_facet Lih Heng, Chan
Shaikh Salleh, Sheikh Hussain
author_sort Lih Heng, Chan
title Classification for breast cancer diagnosis using adaboost
title_short Classification for breast cancer diagnosis using adaboost
title_full Classification for breast cancer diagnosis using adaboost
title_fullStr Classification for breast cancer diagnosis using adaboost
title_full_unstemmed Classification for breast cancer diagnosis using adaboost
title_sort classification for breast cancer diagnosis using adaboost
publisher Penerbit UTM
publishDate 2007
url http://eprints.utm.my/id/eprint/13414/
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