Analysing the performance of classification algorithms on diseases datasets
Change in regular food habits and physical activities of the human body, some of the genetic diseases were inherited from generation to generation. The most common hereditary diseases that stay lifetime are thyroid, diabetics, cancer. Predicting cancer-like diseases consumes time; cure for such here...
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my.uniten.dspace-249382023-05-29T15:29:10Z Analysing the performance of classification algorithms on diseases datasets Lydia E.L. Sharmil N. Shankar K. Maseleno A. 57196059278 57191575400 56884031900 55354910900 Change in regular food habits and physical activities of the human body, some of the genetic diseases were inherited from generation to generation. The most common hereditary diseases that stay lifetime are thyroid, diabetics, cancer. Predicting cancer-like diseases consumes time; cure for such hereditary diseases can be identified at an early stage. Medical technology has been improved for the prognosis of healthcare. Healthcare using prediction analysis enhances medical technology. Researchers have advanced Prediction modelling under three phases. In the first state, they define the issue, collection of data and progress the data. In the second state, they choose a model and perform training and testing and in the third state, they apply the model in real-world. This has become a crucial task in the medical field for immediate disease diagnosis. To advance such automatic healthcare prediction system, modern Artificial Intelligent technology has been developed an easy way to identify the existence of the diseases. The proposed research papers examine the diseases through the disease parameters and classify them using various developed intense classification algorithms such as Support Vector Machine, Decision tree, Logistic Regression, K-nearest neighbor, Naive Bayes. The proposed classification algorithms measure the diseases using the disease datasets which estimates the accurate prediction. The experimental analyses have been carried out over three disease datasets namely Thyroid dataset, diabetics data set, cancer dataset. � 2019, Research Trend. All rights reserved. Final 2023-05-29T07:29:10Z 2023-05-29T07:29:10Z 2019 Article 2-s2.0-85073725231 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85073725231&partnerID=40&md5=51b356873fc545adaf1ccd2f846ba8ce https://irepository.uniten.edu.my/handle/123456789/24938 10 3 224 230 Research Trend Scopus |
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Change in regular food habits and physical activities of the human body, some of the genetic diseases were inherited from generation to generation. The most common hereditary diseases that stay lifetime are thyroid, diabetics, cancer. Predicting cancer-like diseases consumes time; cure for such hereditary diseases can be identified at an early stage. Medical technology has been improved for the prognosis of healthcare. Healthcare using prediction analysis enhances medical technology. Researchers have advanced Prediction modelling under three phases. In the first state, they define the issue, collection of data and progress the data. In the second state, they choose a model and perform training and testing and in the third state, they apply the model in real-world. This has become a crucial task in the medical field for immediate disease diagnosis. To advance such automatic healthcare prediction system, modern Artificial Intelligent technology has been developed an easy way to identify the existence of the diseases. The proposed research papers examine the diseases through the disease parameters and classify them using various developed intense classification algorithms such as Support Vector Machine, Decision tree, Logistic Regression, K-nearest neighbor, Naive Bayes. The proposed classification algorithms measure the diseases using the disease datasets which estimates the accurate prediction. The experimental analyses have been carried out over three disease datasets namely Thyroid dataset, diabetics data set, cancer dataset. � 2019, Research Trend. All rights reserved. |
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57196059278 Lydia E.L. Sharmil N. Shankar K. Maseleno A. |
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Lydia E.L. Sharmil N. Shankar K. Maseleno A. |
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Lydia E.L. Sharmil N. Shankar K. Maseleno A. Analysing the performance of classification algorithms on diseases datasets |
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Lydia E.L. |
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Analysing the performance of classification algorithms on diseases datasets |
title_short |
Analysing the performance of classification algorithms on diseases datasets |
title_full |
Analysing the performance of classification algorithms on diseases datasets |
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Analysing the performance of classification algorithms on diseases datasets |
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Analysing the performance of classification algorithms on diseases datasets |
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analysing the performance of classification algorithms on diseases datasets |
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2023 |
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