INTERNATIONAL JOURNAL OF INNOVATIONS IN APPLIED SCIENCES & ENGINEERING

International Peer Reviewed (Refereed), Open Access Research Journal

(By Aryavart International University, India)

E-ISSN:2454-9258 | P-ISSN:2454-809X | Estd Year: 2015

Impact Factor(2021): 5.246 | Impact Factor(2022): 5.605

ABSTRACT


EMPLOYABILITY OF HYBRID EXTREME LEARNING AND NEURAL NETWORKS IN THE EFFICACIOUS DIAGNOSIS AND MANAGEMENT OF DIABETES MELLITUS

Saumya Shikhar Raj

Vol. 4, Jan-Dec 2018

Page Number: 218 - 227

Abstract:

Objectives: To design a classifier for the detection of Diabetes Mellitus with optimal cost and precise performance. Method and Analysis: The diagnosis and interpretation of the diabetes data are must because a major problem occurs due to this data maintenance. Several types of research are made with machine learning but still needs improvements. In this paper, a new method is evaluated as a hybrid Extreme Learning Machine (HELM) with African Buffalo Optimization (ABO). Findings: ELM is used to select the input data because of the fast learning speed. The optimization technique is used for searching and classifying good diabetic data. The ABO is a population-based algorithm in which individual buffalos work together to identify the diabetics data by updating fitness value for the best output solution. The proposed HELM technique is successfully implemented for diagnosing diabetes disease. By using this machine learning algorithm, the classification accuracy is achieved for classifying the diabetes patients by using much of the data set for training and few data sets for testing. In order to improve the quality as well as accuracy, there is a need for an algorithm. The combination of the ELM-ABO classifier is applied in the training dataset taken from the PRIMA Indian dataset for classification, and the experimental results are compared with SVM and other ELM classifiers applied on the same database. Improvement: It is observed that the HELM method obtained high accuracy in classification with less execution time along with performance evaluation of parameters such as recall, precision, and F-Measure

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