2020
DOI: 10.14569/ijacsa.2020.0110369
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Enhanced Accuracy of Heart Disease Prediction using Machine Learning and Recurrent Neural Networks Ensemble Majority Voting Method

Abstract: To solve many problems in data science, Machine Learning (ML) techniques implicates artificial intelligence which are commonly used. The major utilization of ML is to predict the conclusion established on the extant data. Using an established dataset machine determine emulate and spread them to an unfamiliar data sets to anticipate the conclusion. A few classification algorithm's accuracy prediction is satisfactory, although other perform limited accuracy. Different ML and Deep Learning (DL) networks establish… Show more

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Cited by 60 publications
(34 citation statements)
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“…An accuracy of 85.48% was achieved with the designed model. More recently [30] machine learning and conventional techniques like RF, Support Vector Machine (SVM), and learning models were tested on the UCI Heart Disease dataset. The accuracy was improved by the voting-based model, together with multiple classifiers.…”
Section: Literature Reviewmentioning
confidence: 99%
“…An accuracy of 85.48% was achieved with the designed model. More recently [30] machine learning and conventional techniques like RF, Support Vector Machine (SVM), and learning models were tested on the UCI Heart Disease dataset. The accuracy was improved by the voting-based model, together with multiple classifiers.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Coactive neuro-fuzzy inference system (CANFIS) was utilized to predict heart diseases [ 29 , 36 ]. By combining and integrating the genetic algorithm of the neural network, adaptive capabilities, and the recirculation qualitative method, the CANFIS model was able to identify illness occurrence.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In reality, the two subsets of AI are employed to health data analysis: the first subset is Machine Learning (ML) and the second is Deep Learning (DL) approaches, including radiography images or computed tomography scans, have been shown to be useful on detection of illness and monitoring [12]- [14], [15]- [17]. As a result, various types of human maladies, like as Parkinson's disease [18]- [21], brain tumor segmentation [22], [23], breast cancer [24], diabetes [25], medical image segmentation [26], and heart disease prediction [27]- [30], atherosclerosis diseases [31], could be identified using such techniques. AI advancements have also contributed in the development of a wide range of other scientific fields [32]- [34], [35]- [39].…”
Section: Introductionmentioning
confidence: 99%