Handling Incomplete Data Classification Using Imputed Feature Selected Bagging (IFBAG) Method
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Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Ios Press
Open Access Color
Green Open Access
No
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
Almost all real-world datasets contain missing values. Classification of data with missing values can adversely affect the performance of a classifier if not handled correctly. A common approach used for classification with incomplete data is imputation. Imputation transforms incomplete data with missing values to complete data. Single imputation methods are mostly less accurate than multiple imputation methods which are often computationally much more expensive. This study proposes an imputed feature selected bagging (IFBag) method which uses multiple imputation, feature selection and bagging ensemble learning approach to construct a number of base classifiers to classify new incomplete instances without any need for imputation in testing phase. In bagging ensemble learning approach, data is resampled multiple times with substitution, which can lead to diversity in data thus resulting in more accurate classifiers. The experimental results show the proposed IFBag method is considerably fast and gives 97.26% accuracy for classification with incomplete data as compared to common methods used.
Description
Alquhayz, Hani/0000-0001-8445-7742; Raza, Basit/0000-0001-6711-2363; Khan, Ahmad/0000-0002-6955-8876; Phd, Muhammad Faheem,/0000-0003-4628-4486;
Keywords
Incomplete Data, Machine Learning, Data Classification, Feature Selection, Ensemble Learning
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Q4
Scopus Q
Q3

OpenCitations Citation Count
N/A
Source
Intelligent Data Analysis
Volume
25
Issue
4
Start Page
825
End Page
846
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