Diabetes Prediction Based on Support Vector Machine Model
DOI:
https://doi.org/10.54097/ygdasy74Keywords:
Diabetes, Medical Domain, Support Vector Machine (SVM), Machine Learning, Disease Prediction.Abstract
Diabetes is a chronic condition, the symptoms of which may be relatively mild in the initial stages. Consequently, early prediction is of paramount importance for disease management and treatment. This study aims to employ a Support Vector Machine (SVM) model for the prognostication of diabetes risk. In comparison to conventional prediction techniques, SVMs are adept at capturing complex nonlinear relationships, and possess the capability to handle high-dimensional data and model nonlinearities effectively. By leveraging the strengths of SVMs, it is possible to anticipate the risk of diabetes based on various diagnostic indicators, thereby mitigating the severity of the condition and the risk of complications. The findings of this research offer valuable insights for the management and treatment of diabetes, holding significant application potential for the improvement of diagnosis and therapeutic strategies for diabetic patients.
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