Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian

Statistics from Malaysian government hospitals have revealed that there is an increase in stroke cases from year to year. Stroke illness detection requires additional work; however, it is not a simple process. Since the rule list for Ant-Miner is supposedly shorter than that of other rule induction...

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Main Authors: Azri, Azfaruddin, Saian, Rizauddin
Format: Book Section
Language:English
Published: College of Computing, Informatics and Media, UiTM Perlis 2023
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Online Access:https://ir.uitm.edu.my/id/eprint/100742/1/100742.pdf
https://ir.uitm.edu.my/id/eprint/100742/
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Institution: Universiti Teknologi Mara
Language: English
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spelling my.uitm.ir.1007422024-09-26T18:05:18Z https://ir.uitm.edu.my/id/eprint/100742/ Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian Azri, Azfaruddin Saian, Rizauddin Prediction analysis Algorithms Statistics from Malaysian government hospitals have revealed that there is an increase in stroke cases from year to year. Stroke illness detection requires additional work; however, it is not a simple process. Since the rule list for Ant-Miner is supposedly shorter than that of other rule induction techniques, this study employed it to predict stroke disease. Ant-Miner is an approach for ant colony optimization with data mining. The aim of this study is to develop a classification model for predicting stroke. Using WEKA as a tool, the data set is discretized by changing the numerical attributes to the nominal attributes. The dataset was then processed through the Gui Ant-Miner to discover the patterns and the degree of accuracy in predicting stroke condition. Later, J48 is used to compare the accuracy of Ant outputs Miner's in order to improve classification. To observe variations in accuracy, the number of rules, and the number of conditions, the dataset was run using a range of ants, from 50 to 250. When the minimal case per rule value was changed, rules and condition number were also observed. Due to the test's low bias and variance, the cross-validation number was set at k=10 times throughout. Other parameters, such as the maximum number of uncovered instances and the convergence rules were kept at 10 and 100 respectively. College of Computing, Informatics and Media, UiTM Perlis 2023 Book Section PeerReviewed text en https://ir.uitm.edu.my/id/eprint/100742/1/100742.pdf Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian. (2023) In: Research Exhibition in Mathematics and Computer Sciences (REMACS 5.0). College of Computing, Informatics and Media, UiTM Perlis, pp. 119-120. ISBN 978-629-97934-0-3
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Prediction analysis
Algorithms
spellingShingle Prediction analysis
Algorithms
Azri, Azfaruddin
Saian, Rizauddin
Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
description Statistics from Malaysian government hospitals have revealed that there is an increase in stroke cases from year to year. Stroke illness detection requires additional work; however, it is not a simple process. Since the rule list for Ant-Miner is supposedly shorter than that of other rule induction techniques, this study employed it to predict stroke disease. Ant-Miner is an approach for ant colony optimization with data mining. The aim of this study is to develop a classification model for predicting stroke. Using WEKA as a tool, the data set is discretized by changing the numerical attributes to the nominal attributes. The dataset was then processed through the Gui Ant-Miner to discover the patterns and the degree of accuracy in predicting stroke condition. Later, J48 is used to compare the accuracy of Ant outputs Miner's in order to improve classification. To observe variations in accuracy, the number of rules, and the number of conditions, the dataset was run using a range of ants, from 50 to 250. When the minimal case per rule value was changed, rules and condition number were also observed. Due to the test's low bias and variance, the cross-validation number was set at k=10 times throughout. Other parameters, such as the maximum number of uncovered instances and the convergence rules were kept at 10 and 100 respectively.
format Book Section
author Azri, Azfaruddin
Saian, Rizauddin
author_facet Azri, Azfaruddin
Saian, Rizauddin
author_sort Azri, Azfaruddin
title Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
title_short Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
title_full Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
title_fullStr Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
title_full_unstemmed Predicting stroke using ant colony optimization algorithm / Azfaruddin Azri and Rizauddin Saian
title_sort predicting stroke using ant colony optimization algorithm / azfaruddin azri and rizauddin saian
publisher College of Computing, Informatics and Media, UiTM Perlis
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/100742/1/100742.pdf
https://ir.uitm.edu.my/id/eprint/100742/
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