JOURNAL ARTICLE

Prediction of Heart Disease using Forest Algorithm over K-nearest neighbors using Machine Learning with Improved Accuracy

R.K.N.S. ShanmukhaK. Thinakaran

Year: 2023 Journal:   Cardiometry Pages: 1500-1506   Publisher: Russian New University

Abstract

Aim: To perform Predicting heart disease using the Forest algorithm and comparing its feature extraction precision with the K-nearest neighbors algorithm for working on the precision of the forecast. Materials and Methods: In the proposed work, Predicting heart disease was carried out using machine learning algorithms such as K-nearest neighbors algorithm (n=10) and Forest Algorithm (n=10). Here the pretest power examination was done with gpower 80% and the sample size for the two gatherings was 20. Results: From The implemented experiment, the Forest algorithm accuracy is significantly better and it is 90.0% than the K-nearest neighbors algorithm 83.00%. There is a measurable 2-tailed significant distinction in exactness for two calculations is 0.001 (p<0.05) by performing Independent samples T-tests. Conclusion: The Forest algorithm got better Accuracy and classification of digits better than K-nearest neighbors algorithm for Predicting heart disease.

Keywords:
k-nearest neighbors algorithm Algorithm Computer science Artificial intelligence Random forest Statistical classification Feature (linguistics) Sample (material) Pattern recognition (psychology) Machine learning

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Topics

Artificial Intelligence in Healthcare
Health Sciences →  Health Professions →  Health Information Management
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