Publication Type : Conference Paper
Publisher : ITM Web Conf.
Source : ITM Web of Conferences
Url : https://doi.org/10.1051/itmconf/20235605015
Campus : Amaravati
School : School of Computing
Year : 2023
Abstract : Diabetes Mellitus most called has Diabetes is a type of acute endocrine chronic disease which is the major problem in many individuals either through hereditary or from the trends of the human life style. It elevates the blood sugars in the body due to endocrine issues. This increase in blood sugar does not only affect its levels but even causes many health issues related to kidney, liver functions, blood pressure and eye damage etc. This is most common in the smaller age group, and for the age group above 45 years. Almost 68 percent people in our country suffer from these diabetics. This can be avoided or eradicated when it is predicted near to the levels. With the scenario it is considered has the severe problem and it needs to be controlled at any cost. Combining the technology of Computer Science, we use Machine Learning techniques to predict the diabetes at early stage with a greater accuracy. Here we use different classifiers namely K-Nearest, Naive Bayes (NB), XG Boost, Decision Tree (DT) and Random Forest (RF) from the provided data sets and detect its accuracy. Among those we found Random Forest to be more suitable for higher precision calculation in comparison with other different techniques.
Cite this Research Publication : DMS Rao, Sridatri , Diabetes mellitus prediction using ensemble machine learning techniques, ITM Web Conf., Volume 56, 2023, First International Conference on Data Science and Advanced Computing (ICDSAC 2023)