DIABETES PREDICTION USING MACHINE LEARNING
Abstract
Nowadays most of the people is suffering from diabetes. Diabetes is a chronic disease or
group of metabolic disease where a person suffers from an extended level of blood glucose
in the body, which is either the insulin production is inadequate, or because the body’s cells
do not respond properly to insulin. The constant hyperglycemia of diabetes is related to
long-haul harm, brokenness, and failure of various organs, particularly the eyes, kidneys,
nerves, heart, and veins. The objective of this research is to make use of significant
features, design a prediction algorithm using Machine learning and find the optimal classifier
to give the closest result comparing to clinical outcomes which will help in detection of
diabetes in the patients before it becomes fatal.
The proposed system focuses using algorithms combinations shown above in the block
diagram The base classification algorithms are: Decision tree, Random forest, Support
Vector Machine, Logistic Regression, KNN for accuracy authentication.
Here we are using Machine Learning Algorithms to predict the data and the algorithms we
will use are: Decision Tree, Random Forest, Logistic Regression , SVM Algorithm, KNN
Algorithm
The proposed approach will use different classification and ensemble methods and
implemented using python. These methods will be standard Machine Learning methods
used to obtain the best accuracy from data. Overall we will use best Machine Learning
techniques for prediction and to achieve high performance accuracy.The main aim of this
project is to design and implement Diabetes Prediction Using Machine Learning Methods
and Performance Analysis of that methods. It uses various classification and ensemble
learning method in which SVM, Knn, Random Forest, Decision Tree, Logistic Regression
used.
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- B.TECH [1324]