Performance Evaluation of Simple K-Mean and Parallel K-Mean Clustering Algorithms: Big Data Business Process Management Concept

Author:

Zada Islam1ORCID,Ali Shaukat1ORCID,Khan Inayat2ORCID,Hadjouni Myriam3ORCID,Elmannai Hela4,Zeeshan Muhammad5,Serat Ali Mohammad6ORCID,Jameel Abid7

Affiliation:

1. Department of Computer Science, University of Peshawar, Peshawar, Pakistan

2. Department of Computer Science, University of Buner, Buner, Pakistan

3. Department of Computer Sciences, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia

4. Department of Information Technology, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia

5. Institute of Computing, Kohat University of Science & Technology, Kohat, Pakistan

6. Computer Science Faculty, University of Nangarhar, Jalalabad, Nangarhar, Afghanistan

7. Department of Computer Science & Information Technology, Hazara University, Mansehra, Pakistan

Abstract

Data is the most valuable asset in any firm. As time passes, the data expands at a breakneck speed. A major research issue is the extraction of meaningful information from a complex and huge data source. Clustering is one of the data extraction methods. The basic K-Mean and Parallel K-Mean partition clustering algorithms work by picking random starting centroids. The basic and K-Mean parallel clustering methods are investigated in this work using two different datasets with sizes of 10000 and 5000, respectively. The findings of the Simple K-Mean clustering algorithms alter throughout numerous runs or iterations, according to the study, and so iterations differ for each run or execution. In some circumstances, the clustering algorithms’ outcomes are always different, and the algorithms separate and identify unique properties of the K-Mean Simple clustering algorithm from the K-Mean Parallel clustering algorithm. Differentiating these features will improve cluster quality, lapsed time, and iterations. Experiments are designed to show that parallel algorithms considerably improve the Simple K-Mean techniques. The findings of the parallel techniques are also consistent; however, the Simple K-Mean algorithm’s results vary from run to run. Both the 10,000 and 5000 data item datasets are divided into ten subdatasets for ten different client systems. Clusters are generated in two iterations, i.e., the time it takes for all client systems to complete one iteration (mentioned in chapter number 4). In the first execution, Client No. 5 has the longest elapsed time (8 ms), whereas the longest elapsed time in the following iterations is 6 ms, for a total elapsed time of 12 ms for the K-Mean clustering technique. In addition, the Parallel algorithms reduce the number of executions and the time it takes to complete a task.

Funder

Princess Nourah bint Abdulrahman University

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

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