Hybrid framework of ID3 with multivariate attribute selection for heart disease analysis

2020 ◽  
Vol 33 ◽  
pp. 3918-3921
Author(s):  
C. Usha Nandhini ◽  
P.R. Tamilselvi
2021 ◽  
Vol 12 (4) ◽  
pp. 101144
Author(s):  
Saman Javadi ◽  
Masoud Saatsaz ◽  
S. Mehdy Hashemy Shahdany ◽  
Aminreza Neshat ◽  
Sami Ghordoyee Milan ◽  
...  

1986 ◽  
pp. 404-405
Author(s):  
W. J. Eldredge ◽  
S. Bharati ◽  
S. Flicker ◽  
D. L. Clark ◽  
M. Lev

2021 ◽  
pp. 1-12
Author(s):  
Irfan Javid ◽  
Ahmed Khalaf Zager Alsaedi ◽  
Rozaida Binti Ghazali ◽  
Yana Mazwin ◽  
Muhammad Zulqarnain

In previous studies, various machine-driven decision support systems based on recurrent neural networks (RNN) were ordinarily projected for the detection of cardiovascular disease. However, the majority of these approaches are restricted to feature preprocessing. In this paper, we concentrate on both, including, feature refinement and the removal of the predictive model’s problems, e.g., underfitting and overfitting. By evading overfitting and underfitting, the model will demonstrate good enactment on equally the training and testing datasets. Overfitting the training data is often triggered by inadequate network configuration and inappropriate features. We advocate using Chi2 statistical model to remove irrelevant features when searching for the best-configured gated recurrent unit (GRU) using an exhaustive search strategy. The suggested hybrid technique, called Chi2 GRU, is tested against traditional ANN and GRU models, as well as different progressive machine learning models and antecedently revealed strategies for cardiopathy prediction. The prediction accuracy of proposed model is 92.17% . In contrast to formerly stated approaches, the obtained outcomes are promising. The study’s results indicate that medical practitioner will use the proposed diagnostic method to reliably predict heart disease.


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