Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications

In a ubiquitous environment, high-accuracy data analysis is essential because it affects real-world decision-making. However, in the real world, user-related data from information systems are often missing due to users’ concerns about privacy or lack of obligation to provide complete data. This data...

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Main Authors: Jaemun Sim, Jonathan Sangyun Lee, Ohbyung Kwon
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2015/538613
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spelling doaj-b2c483b796e74b06b2f00e5c871a24992020-11-24T23:03:43ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472015-01-01201510.1155/2015/538613538613Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing ApplicationsJaemun Sim0Jonathan Sangyun Lee1Ohbyung Kwon2SKKU Business School, Sungkyunkwan University, Seoul 110734, Republic of KoreaSchool of Management, Kyung Hee University, Seoul 130701, Republic of KoreaSchool of Management, Kyung Hee University, Seoul 130701, Republic of KoreaIn a ubiquitous environment, high-accuracy data analysis is essential because it affects real-world decision-making. However, in the real world, user-related data from information systems are often missing due to users’ concerns about privacy or lack of obligation to provide complete data. This data incompleteness can impair the accuracy of data analysis using classification algorithms, which can degrade the value of the data. Many studies have attempted to overcome these data incompleteness issues and to improve the quality of data analysis using classification algorithms. The performance of classification algorithms may be affected by the characteristics and patterns of the missing data, such as the ratio of missing data to complete data. We perform a concrete causal analysis of differences in performance of classification algorithms based on various factors. The characteristics of missing values, datasets, and imputation methods are examined. We also propose imputation and classification algorithms appropriate to different datasets and circumstances.http://dx.doi.org/10.1155/2015/538613
collection DOAJ
language English
format Article
sources DOAJ
author Jaemun Sim
Jonathan Sangyun Lee
Ohbyung Kwon
spellingShingle Jaemun Sim
Jonathan Sangyun Lee
Ohbyung Kwon
Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
Mathematical Problems in Engineering
author_facet Jaemun Sim
Jonathan Sangyun Lee
Ohbyung Kwon
author_sort Jaemun Sim
title Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
title_short Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
title_full Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
title_fullStr Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
title_full_unstemmed Missing Values and Optimal Selection of an Imputation Method and Classification Algorithm to Improve the Accuracy of Ubiquitous Computing Applications
title_sort missing values and optimal selection of an imputation method and classification algorithm to improve the accuracy of ubiquitous computing applications
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2015-01-01
description In a ubiquitous environment, high-accuracy data analysis is essential because it affects real-world decision-making. However, in the real world, user-related data from information systems are often missing due to users’ concerns about privacy or lack of obligation to provide complete data. This data incompleteness can impair the accuracy of data analysis using classification algorithms, which can degrade the value of the data. Many studies have attempted to overcome these data incompleteness issues and to improve the quality of data analysis using classification algorithms. The performance of classification algorithms may be affected by the characteristics and patterns of the missing data, such as the ratio of missing data to complete data. We perform a concrete causal analysis of differences in performance of classification algorithms based on various factors. The characteristics of missing values, datasets, and imputation methods are examined. We also propose imputation and classification algorithms appropriate to different datasets and circumstances.
url http://dx.doi.org/10.1155/2015/538613
work_keys_str_mv AT jaemunsim missingvaluesandoptimalselectionofanimputationmethodandclassificationalgorithmtoimprovetheaccuracyofubiquitouscomputingapplications
AT jonathansangyunlee missingvaluesandoptimalselectionofanimputationmethodandclassificationalgorithmtoimprovetheaccuracyofubiquitouscomputingapplications
AT ohbyungkwon missingvaluesandoptimalselectionofanimputationmethodandclassificationalgorithmtoimprovetheaccuracyofubiquitouscomputingapplications
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