A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree)
© 2015 ICIC International. This paper attempts to answer the question “How to construct and apply the novel algorithm based on Ensemble Learning approach called Bayesian Mixed Probability Distributions-CBR-C5.0-CART for Medical Knowledge-Based Systems and Knowledge-Based Systems (KBSs)?” The finding...
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th-cmuir.6653943832-543832018-09-04T10:19:29Z A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) Patcharaporn Paokanta Somdet Srichairatanakool Computer Science Mathematics © 2015 ICIC International. This paper attempts to answer the question “How to construct and apply the novel algorithm based on Ensemble Learning approach called Bayesian Mixed Probability Distributions-CBR-C5.0-CART for Medical Knowledge-Based Systems and Knowledge-Based Systems (KBSs)?” The finding of this study is the new algorithm of Bayesian-Mixed Probability Distributions-C5.0-CART which is developed for the inference engines of KBSs. The proposed algorithm is applied to Thalassemia data set including F-cell, HbA<inf>2</inf>, and Inclusion Body of Thalassemia patients. These are collected from medical practitioner and scientist who are the experts in Thalassemia diagnosis. In the future, this algorithm and a new collected data set will be combined with graph theory to generate the new theory called Ramsey Graph Bayesian-Mixed Probability Distributions for Digital Images Processing and Images Processing. 2018-09-04T10:12:40Z 2018-09-04T10:12:40Z 2015-01-01 Journal 13494198 2-s2.0-84930248097 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84930248097&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/54383 |
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Computer Science Mathematics Patcharaporn Paokanta Somdet Srichairatanakool A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
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© 2015 ICIC International. This paper attempts to answer the question “How to construct and apply the novel algorithm based on Ensemble Learning approach called Bayesian Mixed Probability Distributions-CBR-C5.0-CART for Medical Knowledge-Based Systems and Knowledge-Based Systems (KBSs)?” The finding of this study is the new algorithm of Bayesian-Mixed Probability Distributions-C5.0-CART which is developed for the inference engines of KBSs. The proposed algorithm is applied to Thalassemia data set including F-cell, HbA<inf>2</inf>, and Inclusion Body of Thalassemia patients. These are collected from medical practitioner and scientist who are the experts in Thalassemia diagnosis. In the future, this algorithm and a new collected data set will be combined with graph theory to generate the new theory called Ramsey Graph Bayesian-Mixed Probability Distributions for Digital Images Processing and Images Processing. |
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Patcharaporn Paokanta Somdet Srichairatanakool |
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Patcharaporn Paokanta Somdet Srichairatanakool |
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Patcharaporn Paokanta |
title |
A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
title_short |
A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
title_full |
A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
title_fullStr |
A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
title_full_unstemmed |
A new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: Hybrid Bayesian computing (multinomial logistic regression case-based C5.0-mixed classification and regression tree) |
title_sort |
new algorithm of ensemble learning for medical knowledge-based systems and knowledge-based systems: hybrid bayesian computing (multinomial logistic regression case-based c5.0-mixed classification and regression tree) |
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2018 |
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https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84930248097&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/54383 |
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