Journal of Engineering and Applied Sciences

Year: 2017
Volume: 12
Issue: 11
Page No. 2990 - 2995

Edge Pruning and GA-Based Clustering Approach for Biological Data Analysis

Authors : Athira A. Jolly and Sreeja Ashok

Abstract: Analysis of various kinds of biological data is one of the major problems in bioinformatics. Data mining approaches can be used to uncover hidden patterns and to extract significant knowledge for better analysis and decision making. In this study, we analyse different methods for simplifying the complex networks by identifying significant edges using edge pruning techniques and introduced GA-based clustering process for building optimum subgraphs from the pruned network. The optimum edges were identified by evaluating the similarity between the pair of nodes. Different graph properties like centrality measures are used for positioning the data objects and for improving the cluster cohesiveness. Modularity value was used as the fitness function and mutation operator was performed for deriving the optimum clusters.

How to cite this article:

Athira A. Jolly and Sreeja Ashok, 2017. Edge Pruning and GA-Based Clustering Approach for Biological Data Analysis. Journal of Engineering and Applied Sciences, 12: 2990-2995.

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved