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Clustering Analysis of Effective Health Spending Cost based on Kernel Filtering Techniques
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 Title & Authors
Clustering Analysis of Effective Health Spending Cost based on Kernel Filtering Techniques
Jung, Yong Gyu; Choi, Young Jin; Cha, Byeong Heon;
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 Abstract
As Data mining is a method of extracting the information based on the large data, the technique has been used in many application areas to deal with data in particular. However, the status of the algorithm that can deal with the healthcare data are not fully developed. In this paper, One of clustering algorithm, the EM and DBSCAN are used for performance comparison. It could be analyzed using by the same data. To do this, EM and DBSACN algorithm are changing performance according to the variables in Health expenditure database. Based on the results of the experimental data, We analyze more precise and accurate results using by Kernel Filtering. In this study, we tried comparison of the performance for the algorithm as well as attempt to improve the performance. Through this work, we were analyzed the comparison result of the application of the experimental data and of performance change according to expansion algorithm. Especially, Collects data from the various cluster using the medical record, it could be recommended the effective spending on medical services.
 Keywords
Health Expenditure Data;EM;DBSCAN;Clustering;Regression Analysis;
 Language
Korean
 Cited by
 References
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