Analysis of Clustering for Grouping of Productive Industry by K-Medoid Method

  • Indah Cahya Dewi Department of Electrical and Computer Engineering, Post Graduate Program, Udayana University
  • Bara Yuda Gautama Department of Electrical and Computer Engineering, Post Graduate Program, Udayana University
  • Putu Arya Mertasana Department of Electrical and Computer Engineering, Udayana University

Abstract

With the number of existing data, would have difficulty in doing the classification and the classification of the existing data. To resolve the issue, one way to do clustering is with data mining using clustering technique. The purpose of this research is the importance of knowing the pattern of the production of an industry that can provide the decision and the construction of clustering patterns for development and industrial progress. The results of this research can provide recommendations to improve the development of industry, help the owners of industry to develop the industry to an increase in the number of production and product quality, improve the competitiveness of the owner of the industry in developing its products. In this research will use the K-Medoids algorithm for data grouping of the industry so that it will be found the information that can be used for the recommendations of the improvement of marketing. The results of clustering with the number of cluster 3 produces the first group contains 85 members, the second group contains 222 members and the third group numbered 3 members. The third group are classified as productive because it has a combination of the value of the production of the most high the results of clustering have the quality of purity worth 1 means good cluster quality.

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Published
2017-09-23
How to Cite
DEWI, Indah Cahya; GAUTAMA, Bara Yuda; MERTASANA, Putu Arya. Analysis of Clustering for Grouping of Productive Industry by K-Medoid Method. International Journal of Engineering and Emerging Technology, [S.l.], v. 2, n. 1, p. 26-30, sep. 2017. ISSN 2579-5988. Available at: <https://ojs.unud.ac.id/index.php/ijeet/article/view/34441>. Date accessed: 11 may 2021.

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