Ensemble Classifier Modelling for Dealing with Missing Values

aut.embargoNoen_NZ
aut.thirdpc.containsNoen_NZ
dc.contributor.advisorNarayanan, Ajit
dc.contributor.advisorSarkar, Nurul
dc.contributor.authorHasan, Mohammad Rajib
dc.date.accessioned2020-01-10T01:44:51Z
dc.date.available2020-01-10T01:44:51Z
dc.date.copyright2020
dc.date.issued2020
dc.date.updated2020-01-09T23:35:36Z
dc.description.abstractAn ensemble classifier method for life critical data classification is considered one of the most capable classifiers where data suffers from missing values. The execution of a decision tree classifier can be expanded by the ensemble method as it is found to be the most superior method for single classifiers. Notwithstanding, the performance of an ensemble classifier relies upon the data quality and missing values. In this study, we discover that better classification accuracy is often achieved by missing value imputation. Medical experts do not have confidence in missing value imputation (filling up the missing values by any of the statistical methods) as each case/attribute is unique and possesses different possibilities. Missing value imputation in life critical data may lead to the wrong diagnosis and thus medical decision making may be influenced wrongly, which is dangerous and life threatening. This study, therefore, proposes a new ensemble model that can accomplish a preferred accuracy of over 96 percent without missing value imputation. The relevancy of features like HPV, HIV, AIDS, and smoking with cervical cancer is a long debate. This study successfully selected some of these influential features and validated their relevancy in terms of accuracy with statistical error root squared mean error and mean absolute error. This study also considers true-positive and false-positive rates in accuracy. Finally, this study concluded that missing value imputation in life critical data may not be necessary to obtain better accuracy. Selection of base classifiers in the ensemble method should be the prior concern over missing value imputation.en_NZ
dc.identifier.urihttps://hdl.handle.net/10292/13085
dc.language.isoenen_NZ
dc.publisherAuckland University of Technology
dc.rights.accessrightsOpenAccess
dc.subjectEnsembleen_NZ
dc.subjectMissing valueen_NZ
dc.subjectClassifieren_NZ
dc.subjectMachine learningen_NZ
dc.subjectCervical canceren_NZ
dc.subjectEnsemble_rhen_NZ
dc.titleEnsemble Classifier Modelling for Dealing with Missing Valuesen_NZ
dc.typeThesisen_NZ
thesis.degree.grantorAuckland University of Technology
thesis.degree.levelMasters Theses
thesis.degree.nameMaster of Philosophyen_NZ
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