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Yoking of Algorithms for Effective Clustering


Affiliations
1 Department of CSE, Sathyabama University, Chennai - 600119, Tamil Nadu, India
2 Department of IT, Jeppiaar Engineering College, Chennai - 600119, Tamil Nadu, India
 

Cluster plays a vital and very important in data mining. Cluster is a main and absolute part of real time applications. Grouping an object with its own class is known as Cluster. It has two different segments, Similar and Dissimilar objects. K Mean (KM) is one of the exclusive clustering algorithms. K Mean algorithm is introduced by cluster, which forms an easier and simpler way of classifying a given set of data. This paper is clearly based on Gravitational Search Algorithm (GSA) and KM algorithm. The main advantage of GSA and KM algorithm is to escape local optima and make convergence motions in rapid progression. A main five data sets in an UCI repository is used to bring the results and solutions in an excellent way using these algorithms. This paper aims to bring an exclusive and efficient result from both the algorithms compared to other algorithm and also gives perfect solution for the existing set of data.

Keywords

GSA, K Mean, UCI Repository
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  • Yoking of Algorithms for Effective Clustering

Abstract Views: 166  |  PDF Views: 0

Authors

K. Mohana Prasad
Department of CSE, Sathyabama University, Chennai - 600119, Tamil Nadu, India
R. Sabitha
Department of IT, Jeppiaar Engineering College, Chennai - 600119, Tamil Nadu, India

Abstract


Cluster plays a vital and very important in data mining. Cluster is a main and absolute part of real time applications. Grouping an object with its own class is known as Cluster. It has two different segments, Similar and Dissimilar objects. K Mean (KM) is one of the exclusive clustering algorithms. K Mean algorithm is introduced by cluster, which forms an easier and simpler way of classifying a given set of data. This paper is clearly based on Gravitational Search Algorithm (GSA) and KM algorithm. The main advantage of GSA and KM algorithm is to escape local optima and make convergence motions in rapid progression. A main five data sets in an UCI repository is used to bring the results and solutions in an excellent way using these algorithms. This paper aims to bring an exclusive and efficient result from both the algorithms compared to other algorithm and also gives perfect solution for the existing set of data.

Keywords


GSA, K Mean, UCI Repository



DOI: https://doi.org/10.17485/ijst%2F2015%2Fv8i22%2F141639