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Using the Clustering Algorithms and Rule-based of Data Mining to Identify Affecting Factors in the Profit and Loss of Third Party Insurance, Insurance Company Auto


Affiliations
1 Department of Electrical and Computer Engineering, Shiraz University, Shiraz, Iran
2 Kohgiluyeh and Boyer Ahmad Science and Research Branch, Islamic Azad University, Iran
 

Background/Objectives: Insurance data analysis can be considered as a way of losses reduction by using data mining. It uses the machine learning, pattern recognition and data base theory for discovering the unknown knowledge. Methods/Statistical Analysis: In this paper, information of 2011, third party insurance of Iran insurance company auto has analyzed in Kohgiluyeh and Boyer Ahmad by using the data mining method. Findings: The results show that using clustering algorithms with acceptable clusters will be able to provide a model to identify affecting factors and to determine the effect of them in the profit and loss of auto third party insurance. Applications/Improvements: The algorithm of K-Means has formed the best clustering with 9 clusters that have relatively good quality. It means that has been able to maximize the distance between the cluster and minimize the within cluster distance.


Keywords

Clustering Algorithm, Data Mining, Insurance, Profit and Loss, Third Party
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  • Using the Clustering Algorithms and Rule-based of Data Mining to Identify Affecting Factors in the Profit and Loss of Third Party Insurance, Insurance Company Auto

Abstract Views: 151  |  PDF Views: 0

Authors

Faramarz Karamizadeh
Department of Electrical and Computer Engineering, Shiraz University, Shiraz, Iran
Seyed Ahad Zolfagharifar
Kohgiluyeh and Boyer Ahmad Science and Research Branch, Islamic Azad University, Iran

Abstract


Background/Objectives: Insurance data analysis can be considered as a way of losses reduction by using data mining. It uses the machine learning, pattern recognition and data base theory for discovering the unknown knowledge. Methods/Statistical Analysis: In this paper, information of 2011, third party insurance of Iran insurance company auto has analyzed in Kohgiluyeh and Boyer Ahmad by using the data mining method. Findings: The results show that using clustering algorithms with acceptable clusters will be able to provide a model to identify affecting factors and to determine the effect of them in the profit and loss of auto third party insurance. Applications/Improvements: The algorithm of K-Means has formed the best clustering with 9 clusters that have relatively good quality. It means that has been able to maximize the distance between the cluster and minimize the within cluster distance.


Keywords


Clustering Algorithm, Data Mining, Insurance, Profit and Loss, Third Party



DOI: https://doi.org/10.17485/ijst%2F2016%2Fv9i7%2F130870