Constructing decision rules from naive bayes model for robust and low complexity classification

A large spectrum of classifiers has been described in the literature. One attractive classification technique is a Naïve Bayes (NB) which has been relayed on probability theory. NB has two major limitations: First, it requires to rescan the dataset and applying a set of equations each time to classi...

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Main Authors: Nabeel Hashim Al-Aaraji, Safaa Obayes Al-Mamory, Ali Hashim Al-Shakarchi
Format: Article
Language:English
Published: Universitas Ahmad Dahlan 2021-03-01
Series:IJAIN (International Journal of Advances in Intelligent Informatics)
Online Access:http://ijain.org/index.php/IJAIN/article/view/578
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spelling doaj-9873c8bb9e5c471388808947ac6d9eec2021-04-04T08:22:21ZengUniversitas Ahmad DahlanIJAIN (International Journal of Advances in Intelligent Informatics)2442-65712548-31612021-03-0171768810.26555/ijain.v7i1.578167Constructing decision rules from naive bayes model for robust and low complexity classificationNabeel Hashim Al-Aaraji0Safaa Obayes Al-Mamory1Ali Hashim Al-Shakarchi2Ministry of Higher EducationCollege of Business Informatics, University of Information Technology and CommunicationsCollege of Information Technology, University of BabylonA large spectrum of classifiers has been described in the literature. One attractive classification technique is a Naïve Bayes (NB) which has been relayed on probability theory. NB has two major limitations: First, it requires to rescan the dataset and applying a set of equations each time to classify instances, which is an expensive step if a dataset is relatively large. Second, NB may remain challenging for non-statisticians to understand the deep work of a model. On the other hand, Rule-Based classifiers (RBCs) have used IF-THEN rules (henceforth, rule-set), which are more comprehensible and less complex for classification tasks. For elevating NB limitations, this paper presents a method for constructing a rule-set from the NB model, which serves as RBC. Experiments of the constructing rule-set have been conducted on (Iris, WBC, Vote) datasets. Coverage, Accuracy, M-Estimate, and Laplace are crucial evaluation metrics that have been projected to rule-set. In some datasets, the rule-set obtains significant accuracy results that reach 95.33 %, 95.17% for Iris and vote datasets, respectively. The constructed rule-set can mimic the classification capability of NB, provide a visual representation of the model, express rules infidelity with acceptable accuracy; an easier method to interpreting and adjusting from the original model. Hence, the rule-set will provide a comprehensible and lightweight model than NB itself.http://ijain.org/index.php/IJAIN/article/view/578
collection DOAJ
language English
format Article
sources DOAJ
author Nabeel Hashim Al-Aaraji
Safaa Obayes Al-Mamory
Ali Hashim Al-Shakarchi
spellingShingle Nabeel Hashim Al-Aaraji
Safaa Obayes Al-Mamory
Ali Hashim Al-Shakarchi
Constructing decision rules from naive bayes model for robust and low complexity classification
IJAIN (International Journal of Advances in Intelligent Informatics)
author_facet Nabeel Hashim Al-Aaraji
Safaa Obayes Al-Mamory
Ali Hashim Al-Shakarchi
author_sort Nabeel Hashim Al-Aaraji
title Constructing decision rules from naive bayes model for robust and low complexity classification
title_short Constructing decision rules from naive bayes model for robust and low complexity classification
title_full Constructing decision rules from naive bayes model for robust and low complexity classification
title_fullStr Constructing decision rules from naive bayes model for robust and low complexity classification
title_full_unstemmed Constructing decision rules from naive bayes model for robust and low complexity classification
title_sort constructing decision rules from naive bayes model for robust and low complexity classification
publisher Universitas Ahmad Dahlan
series IJAIN (International Journal of Advances in Intelligent Informatics)
issn 2442-6571
2548-3161
publishDate 2021-03-01
description A large spectrum of classifiers has been described in the literature. One attractive classification technique is a Naïve Bayes (NB) which has been relayed on probability theory. NB has two major limitations: First, it requires to rescan the dataset and applying a set of equations each time to classify instances, which is an expensive step if a dataset is relatively large. Second, NB may remain challenging for non-statisticians to understand the deep work of a model. On the other hand, Rule-Based classifiers (RBCs) have used IF-THEN rules (henceforth, rule-set), which are more comprehensible and less complex for classification tasks. For elevating NB limitations, this paper presents a method for constructing a rule-set from the NB model, which serves as RBC. Experiments of the constructing rule-set have been conducted on (Iris, WBC, Vote) datasets. Coverage, Accuracy, M-Estimate, and Laplace are crucial evaluation metrics that have been projected to rule-set. In some datasets, the rule-set obtains significant accuracy results that reach 95.33 %, 95.17% for Iris and vote datasets, respectively. The constructed rule-set can mimic the classification capability of NB, provide a visual representation of the model, express rules infidelity with acceptable accuracy; an easier method to interpreting and adjusting from the original model. Hence, the rule-set will provide a comprehensible and lightweight model than NB itself.
url http://ijain.org/index.php/IJAIN/article/view/578
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