Clustering Analysis on Alumni Data Using Abandoned and Reborn Particle Swarm Optimization
by Paulus Mudjihartono; Thitipong Tanprasert; Rachsuda Jiamthapthaksin
Title: | Clustering Analysis on Alumni Data Using Abandoned and Reborn Particle Swarm Optimization |
Author(s): | Paulus Mudjihartono
Thitipong Tanprasert Rachsuda Jiamthapthaksin |
Issued date: | 2016-02 |
Citation: | Proceedings of the 8th International Conference on Knowledge and Smart Technology (KST 2016), – IEEE XPlore, pp. 22-26 |
Abstract: |
Alumni data is one of the most important data that university management uses for developing the learning process decisions. This paper applies the idea of Abandoned and Reborn PSO (AR-PSO) to convert a clustering problem into the optimization form with an objective function to minimize the ugliness of the desired clusters. This algorithm of Clustering using AR-PSO (CAR-PSO) is slightly adapted to the cluster problem domain. The generated clusters need to be examined to decide if they are acceptable. There are three evaluations; the closeness, the separation and the purity. Finally, the experiment results show that the CAR-PSO is comparable with &-means in both types of alumni data while leaving the other two clustering algorithms. |
Keyword(s): | Evaluation
Clustering Alumni data CAR-PSO |
Resource type: | Proceeding Paper |
Extent: | 5 pages |
Type: | Text |
File type: | application/pdf |
Language: | eng |
Rights holder(s): | Paulus Mudjihartono Thitipong Tanprasert Rachsuda Jiamthapthaksin |
URI: | http://repository.au.edu/handle/6623004553/20848 |
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