Explainable predictions of different machine learning algorithms used to
predict Early Stage diabetes
- URL: http://arxiv.org/abs/2111.09939v1
- Date: Thu, 18 Nov 2021 20:29:03 GMT
- Title: Explainable predictions of different machine learning algorithms used to
predict Early Stage diabetes
- Authors: V. Vakil, S. Pachchigar, C. Chavda, S. Soni
- Abstract summary: Diabetes Mellitus which is one of the major diseases can be easily diagnosed by several Machine Learning algorithms.
In this paper we have made a comparative analysis of several machine learning algorithms viz. Random Forest, Decision Tree, Artificial Neural Networks, K Nearest Neighbor, Support Vector Machine, and XGBoost.
As per the experimental results obtained, the Random Forest algorithm has outperformed all the other algorithms with an accuracy of 99 percent on this particular dataset.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Machine Learning and Artificial Intelligence can be widely used to diagnose
chronic diseases so that necessary precautionary treatment can be done in
critical time. Diabetes Mellitus which is one of the major diseases can be
easily diagnosed by several Machine Learning algorithms. Early stage diagnosis
is crucial to prevent dangerous consequences. In this paper we have made a
comparative analysis of several machine learning algorithms viz. Random Forest,
Decision Tree, Artificial Neural Networks, K Nearest Neighbor, Support Vector
Machine, and XGBoost along with feature attribution using SHAP to identify the
most important feature in predicting the diabetes on a dataset collected from
Sylhet Hospital. As per the experimental results obtained, the Random Forest
algorithm has outperformed all the other algorithms with an accuracy of 99
percent on this particular dataset.
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