Advanced Heart Attack Risk Prediction Using Stacked Hybrid Machine Learning

Authors

  • Rudraksh Singh Bhaduaria Department of Electrical, Electronics and Communication Engineering, Sharda University Greater Noida, 201310, India
  • Iqra Javid Department of Electrical, Electronics and Communication Engineering, Sharda University Greater Noida, 201310, India
  • Anirban Khara George Washington University, Washington University, USA

DOI:

https://doi.org/10.13052/jmm1550-4646.21343

Keywords:

Heart disease, machine learning, random forest, hybrid model

Abstract

In this paper, an all-inclusive machine learning framework is developed for predicting the risk of heart disease by using many advanced classification techniques. Heart disease have been one of the leading causes of death worldwide, and early detection forms the basis of effective intervention and treatment. We implement and compare hybrid models that combine algorithms like Random Forest, Support Vector Machine, XGBoost, and logistic regression for predictive performance improvement. Besides, we used some traditional models, like K-Nearest Neighbors, Naive Bayes, and Decision Trees, as baseline comparisons. This work suggests how feature importance analysis using Random Forest is a critical step towards identifying key predictors in presence of heart disease.

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Author Biographies

Rudraksh Singh Bhaduaria, Department of Electrical, Electronics and Communication Engineering, Sharda University Greater Noida, 201310, India

Rudraksh Singh Bhadauria is a 3rd-year B.Tech student in Electronics and Communication Engineering at Sharda University. His research focuses on artificial intelligence, machine learning, deep learning, and computer vision, with applications in anomaly detection, speech recognition, and intelligent traffic management.

Iqra Javid, Department of Electrical, Electronics and Communication Engineering, Sharda University Greater Noida, 201310, India

Iqra Javid is currently pursuing her Ph.D. in wireless Communication from Sharda University, India. She has obtained her M.Tech in Digital Communication from Sharda University, India. Her interest includes Machine learning, Artificial Intelligence, wireless networks and device to device communications.

Anirban Khara, George Washington University, Washington University, USA

Anirban Khara is pursuing an MS in Computer Science at George Washington University. His research focus on machine learning, Artificial Intelligence and deep learning.

References

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Published

2025-08-13

How to Cite

Bhaduaria, R. S. ., Javid, I. ., & Khara, A. . (2025). Advanced Heart Attack Risk Prediction Using Stacked Hybrid Machine Learning. Journal of Mobile Multimedia, 21(3-4), 393–406. https://doi.org/10.13052/jmm1550-4646.21343

Issue

Section

WPMC 2024