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Using Machine Learning Technologies to Classify and Predict Heart Disease
The techniques of data mining are used widely in the healthcare sector to predict and diagnose various diseases. Diagnosis of heart disease is considered as one of the very important applications of these systems. Data is being collected today in a large amount where people need to rely on the devic...
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Published in: | International journal of advanced computer science & applications 2021, Vol.12 (3) |
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container_title | International journal of advanced computer science & applications |
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creator | Alrifaie, Mohammed F. Hussain, Zakir Shakir, Asaad Lafta, Modhi |
description | The techniques of data mining are used widely in the healthcare sector to predict and diagnose various diseases. Diagnosis of heart disease is considered as one of the very important applications of these systems. Data is being collected today in a large amount where people need to rely on the device. In recent years, heart disease has increased excessively and heart disease has become one of the deadliest diseases in many countries. Most data sets often suffer from extreme values that reduce the accuracy percentage in classification. Extreme values are defined in terms of irrelevant or incorrect data, missing values, and the incorrect values of the dataset. Data conversion is another very important way to preconfigure the process of converting data into suitable mining models by acting assembly or assembly and filtering methods such as eliminating duplicate features by using the link and one of the wrap methods, and applying the repeated discrimination feature. This process is performed, dealing with lost values through the "Remove with values" methods and methods of estimating the layer. Classification methods like Naïve Bayes (NB) and Random Forest (RF) are applied to the original datasets and data sets with the feature of selection methods too. All of these operations are implemented on three various sets of heart disease data for the analysis of pre-treatment effect in terms of accuracy. |
doi_str_mv | 10.14569/IJACSA.2021.0120315 |
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subjects | Assembly Cardiovascular disease Classification Data conversion Data mining Datasets Extreme values Heart Heart diseases Machine learning |
title | Using Machine Learning Technologies to Classify and Predict Heart Disease |
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