Genetic algorithm fuzzy logic for medical knowledge-based pattern classification
Hybrid of genetic algorithm and fuzzy logic in genetic fuzzy system exemplifies the advantage of best heuristic search with ease of understanding and interpretability. This research proposed an algorithm named Genetic Algorithm Fuzzy Logic (GAFL) with Pittsburg approach for rules learning and induct...
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my.uniten.dspace-237792023-05-29T14:51:47Z Genetic algorithm fuzzy logic for medical knowledge-based pattern classification Tan C.H. Tan M.S. Chang S.-W. Yap K.S. Yap H.J. Wong S.Y. 55175180600 57191523103 55276259900 24448864400 35319362200 55812054100 Hybrid of genetic algorithm and fuzzy logic in genetic fuzzy system exemplifies the advantage of best heuristic search with ease of understanding and interpretability. This research proposed an algorithm named Genetic Algorithm Fuzzy Logic (GAFL) with Pittsburg approach for rules learning and induction in genetic fuzzy system knowledge discovery. The proposed algorithm was applied and tested in four critical illness datasets in medical knowledge pattern classification. GAFL, with simplistic binary coding scheme using Pittsburg approach managed to exploit the potential of genetic fuzzy inference system with ease of comprehension in fuzzy rules induction in knowledge pattern recognition. The proposed algorithm was tested with three public available medical datasets, which are Wisconsin Breast Cancer (WBC) dataset, Pima Indian Diabetes dataset (PID), Parkinson Disease dataset (PD) and one locally collected oral cancer dataset. The results obtained showed that GAFL outperformed most of the other models that acknowledged from the previous studies. GAFL possessed the advantage of fuzzy rules extraction feature apart from conventional classification technique compared to other models which are lack of fuzzy interpretation. It is easier to interpret and understand fuzzy value in contrast to continuous or range value. GAFL outperformed the other algorithms in terms of accuracy without compromising on interpretability. It is vital to obtain high accuracy in medical pattern recognition especially when dealing with critical illness. � School of Engineering, Taylor�s University. Final 2023-05-29T06:51:47Z 2023-05-29T06:51:47Z 2018 Article 2-s2.0-85057083232 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85057083232&partnerID=40&md5=1dea6e0b9d4987fce4072cff6b7f7a9f https://irepository.uniten.edu.my/handle/123456789/23779 13 Special Issue on ICCSIT 2018 242 258 Taylor's University Scopus |
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Hybrid of genetic algorithm and fuzzy logic in genetic fuzzy system exemplifies the advantage of best heuristic search with ease of understanding and interpretability. This research proposed an algorithm named Genetic Algorithm Fuzzy Logic (GAFL) with Pittsburg approach for rules learning and induction in genetic fuzzy system knowledge discovery. The proposed algorithm was applied and tested in four critical illness datasets in medical knowledge pattern classification. GAFL, with simplistic binary coding scheme using Pittsburg approach managed to exploit the potential of genetic fuzzy inference system with ease of comprehension in fuzzy rules induction in knowledge pattern recognition. The proposed algorithm was tested with three public available medical datasets, which are Wisconsin Breast Cancer (WBC) dataset, Pima Indian Diabetes dataset (PID), Parkinson Disease dataset (PD) and one locally collected oral cancer dataset. The results obtained showed that GAFL outperformed most of the other models that acknowledged from the previous studies. GAFL possessed the advantage of fuzzy rules extraction feature apart from conventional classification technique compared to other models which are lack of fuzzy interpretation. It is easier to interpret and understand fuzzy value in contrast to continuous or range value. GAFL outperformed the other algorithms in terms of accuracy without compromising on interpretability. It is vital to obtain high accuracy in medical pattern recognition especially when dealing with critical illness. � School of Engineering, Taylor�s University. |
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55175180600 Tan C.H. Tan M.S. Chang S.-W. Yap K.S. Yap H.J. Wong S.Y. |
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Tan C.H. Tan M.S. Chang S.-W. Yap K.S. Yap H.J. Wong S.Y. |
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Tan C.H. Tan M.S. Chang S.-W. Yap K.S. Yap H.J. Wong S.Y. Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
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Tan C.H. |
title |
Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
title_short |
Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
title_full |
Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
title_fullStr |
Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
title_full_unstemmed |
Genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
title_sort |
genetic algorithm fuzzy logic for medical knowledge-based pattern classification |
publisher |
Taylor's University |
publishDate |
2023 |
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1806424173922222080 |