Multi-Objective Optimization Algorithm to the Analyses of Diabetes Disease Diagnosis

Abstract

There is huge amount of data available in health industry which is found difficult in handing, hence mining of data is necessary to innovate the hidden patterns and their relevant features. Recently, many researchers have devoted to the study of using data mining on disease diagnosis. Mining bio-medical data is one of the predominant research area where evolutionary algorithms and clustering techniques are emphasized in diabetes disease diagnosis. Therefore, this research focuses on application of evolution clustering multi-objective optimization algorithm (ECMO) to analyze the data of patients suffering from diabetes disease. The main objective of this work is to maximize the prediction accuracy of cluster and computation efficiency along with minimum cost for data clustering. The experimental results prove that this application has attained maximum accuracy for dataset of Pima Indians Diabetes from UCI repository. In this way, by analyzing the three objectives, ECMO could achieve best Pareto fronts.

Authors and Affiliations

M. Anusha, Dr. J. G. R. Sathiaseelan

Keywords

Related Articles

Systematic Literature Review (SLR) of Resource Scheduling and Security in Cloud Computing

Resource scheduling in cloud computing is a com-plex task due to the number and variety of resources available and the volatility of usage-patterns of resources considering that the resource setting is on the service pro...

Model for Time Series Imputation based on Average of Historical Vectors, Fitting and Smoothing

This paper presents a novel model for univariate time series imputation of meteorological data based on three algorithms: The first of them AHV (Average of Historical Vectors) estimates the set of NA values from historic...

Analysis of the Impact of Different Parameter Settings on Wireless Sensor Network Lifetime

The importance of wireless sensors is increasing day by day due to their large demand. Sensor networks are facing some issues in which battery lifetime of sensor node is critical. It depends on the nature and application...

A Hybrid Approach for Co-Channel Speech Segregation based on CASA, HMM Multipitch Tracking, and Medium Frame Harmonic Model

This paper proposes a hybrid approach for co-channel speech segregation. HMM (hidden Markov model) is used to track the pitches of 2 talkers. The resulting pitch tracks are then enriched with the prominent pitch. The enr...

Conservative Noise Filters

Noisy training data have a huge negative impact on machine learning algorithms. Noise-filtering algorithms have been proposed to eliminate such noisy instances. In this work, we empirically show that the most popular noi...

Download PDF file
  • EP ID EP148940
  • DOI 10.14569/IJACSA.2016.070166
  • Views 111
  • Downloads 0

How To Cite

M. Anusha, Dr. J. G. R. Sathiaseelan (2016). Multi-Objective Optimization Algorithm to the Analyses of Diabetes Disease Diagnosis. International Journal of Advanced Computer Science & Applications, 7(1), 485-488. https://europub.co.uk/articles/-A-148940