A Machine Learning Approach to Early Stage Diabetes Risk Prediction

dc.contributor.advisorNagy, Dávid
dc.contributor.authorAtak, Kaan
dc.contributor.departmentDE--Informatikai Karhu_HU
dc.date.accessioned2020-12-03T08:01:00Z
dc.date.available2020-12-03T08:01:00Z
dc.date.created2020-12-02
dc.description.abstractEarly detection and treatment of diabetes play an important role to keep people diagnosed with diabetes healthy. In this modern era of technology, machine learning can help us to detect diseases accurately. Classification is an important aspect of machine learning which is used for prediction. And this thesis aimed to explore some binary classification models, the finalized model of which can be used to predict diabetes in the early stage. To reach this aim, we were provided with a survey dataset containing reports of diabetes-related symptoms of 520 persons. Using survey data, we assessed the capabilities of machine learning models to predict patients at risk and evaluate highly associated symptoms among patients in the data that is correlated to diabetes. The trained model uses the classifiers to learns the symptoms of the patients and tries to predict whether the patient is likely to have diabetes. In the end, performance and quality measures of the classifiers evaluated using various performance metrics, and evaluations of the classifiers were compared.hu_HU
dc.description.courseBusiness Informaticshu_HU
dc.description.degreeBSc/BAhu_HU
dc.format.extent57hu_HU
dc.identifier.urihttp://hdl.handle.net/2437/299197
dc.language.isoenhu_HU
dc.subjectPythonhu_HU
dc.subjectMachine Learninghu_HU
dc.subjectClassificationhu_HU
dc.subjectSupervised learninghu_HU
dc.subject.dspaceDEENK Témalista::Informatikahu_HU
dc.titleA Machine Learning Approach to Early Stage Diabetes Risk Predictionhu_HU
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