Missing values imputation in Arabic datasets using enhanced robust association rules
Missing value (MV) is one form of data completeness problem in massive datasets. To deal with missing values, data imputation methods were proposed with the aim to improve the completeness of the datasets concerned. Data imputation's accuracy is a common indicator of a data imputation technique...
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Institute of Advanced Engineering and Science
2022
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my.utem.eprints.264312023-03-28T13:46:13Z http://eprints.utem.edu.my/id/eprint/26431/ Missing values imputation in Arabic datasets using enhanced robust association rules Emran, Nurul Akmar Draman @ Muda, Azah Kamilah Thabet Salem, Salem Awsan Zahriah, Sahri Ali, Abdulrazzak Missing value (MV) is one form of data completeness problem in massive datasets. To deal with missing values, data imputation methods were proposed with the aim to improve the completeness of the datasets concerned. Data imputation's accuracy is a common indicator of a data imputation technique's efficiency. However, the efficiency of data imputation can be affected by the nature of the language in which the dataset is written. To overcome this problem, it is necessary to normalize the data, especially in non-Latin languages such as the Arabic language. This paper proposes a method that will address the challenge inherent in Arabic datasets by extending the enhanced robust association rules (ERAR) method with Arabic detection and correction functions. Iterative and Decision Tree methods were used to evaluate the proposed method in an experiment. Experiment results show that the proposed method offers a higher data imputation accuracy than the Iterative and decision tree methods. Institute of Advanced Engineering and Science 2022-09 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/26431/2/28012-58448-1-PB%20PUBLISHED.PDF Emran, Nurul Akmar and Draman @ Muda, Azah Kamilah and Thabet Salem, Salem Awsan and Zahriah, Sahri and Ali, Abdulrazzak (2022) Missing values imputation in Arabic datasets using enhanced robust association rules. Indonesian Journal of Electrical Engineering and Computer Science, 28 (2). pp. 1067-1075. ISSN 2502-4752 https://ijeecs.iaescore.com/index.php/IJEECS/article/view/28012/16821 10.11591/ijeecs.v28.i2.pp1067-1075 |
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Missing value (MV) is one form of data completeness problem in massive datasets. To deal with missing values, data imputation methods were proposed with the aim to improve the completeness of the datasets concerned. Data imputation's accuracy is a common indicator of a data imputation technique's efficiency. However, the efficiency of data imputation can be affected by the nature of the language in which the dataset is written. To overcome this problem, it is necessary to normalize the data, especially in non-Latin languages such as the Arabic language. This paper proposes a method that will address the challenge inherent in Arabic datasets by extending the enhanced robust association rules (ERAR) method with Arabic detection and correction functions. Iterative and Decision Tree methods were used to evaluate the proposed method in an experiment. Experiment results show that the proposed method offers a higher data imputation accuracy than the Iterative and decision tree methods. |
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Emran, Nurul Akmar Draman @ Muda, Azah Kamilah Thabet Salem, Salem Awsan Zahriah, Sahri Ali, Abdulrazzak |
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Emran, Nurul Akmar Draman @ Muda, Azah Kamilah Thabet Salem, Salem Awsan Zahriah, Sahri Ali, Abdulrazzak Missing values imputation in Arabic datasets using enhanced robust association rules |
author_facet |
Emran, Nurul Akmar Draman @ Muda, Azah Kamilah Thabet Salem, Salem Awsan Zahriah, Sahri Ali, Abdulrazzak |
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Emran, Nurul Akmar |
title |
Missing values imputation in Arabic datasets using enhanced robust association rules |
title_short |
Missing values imputation in Arabic datasets using enhanced robust association rules |
title_full |
Missing values imputation in Arabic datasets using enhanced robust association rules |
title_fullStr |
Missing values imputation in Arabic datasets using enhanced robust association rules |
title_full_unstemmed |
Missing values imputation in Arabic datasets using enhanced robust association rules |
title_sort |
missing values imputation in arabic datasets using enhanced robust association rules |
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Institute of Advanced Engineering and Science |
publishDate |
2022 |
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http://eprints.utem.edu.my/id/eprint/26431/2/28012-58448-1-PB%20PUBLISHED.PDF http://eprints.utem.edu.my/id/eprint/26431/ https://ijeecs.iaescore.com/index.php/IJEECS/article/view/28012/16821 |
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