1Probabilistic Optimization of Machine Learning Algorithms for Heart Disease Prediction
Jaspreet Kaur1*, Bharti Joshi2 and Rajashree Shedge2
1Ramrao Adik Institute of Technology, Nerul, Navi Mumbai, India
2Department of Computer Engineering Ramrao, Adik Institute of Technology Nerul, Navi Mumbai, India
Abstract
Big Data and Machine Learning have been effectively used in medical management leading to cost reduction in treatment, predicting the outbreak of epidemics, avoiding preventable diseases, and, improving the quality of life.
Prediction begins with the machine learning patterns from several existing known datasets and then applying something very similar to an obscure dataset to check the result. In this chapter, we investigate Ensemble Learning which overcomes the limitations of a single algorithm such as bias and variance by using a multitude of algorithms. The focus is not solely increasing the accuracy of weak classification algorithmic programs however additionally implementing the algorithm on a medical dataset wherever it is effectively used for analysis, prediction, and treatment. The consequence of the investigation indicates that ensemble techniques are powerful in improving the forecast accuracy and displaying an acceptable performance in disease prediction. Additionally, we have worked on a procedure to further improve the accuracy post applying ensemble method by focusing on the wrongly classified records and using probabilistic optimization to select pertinent ...
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