isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company

Due to the sharp rise of the information technology (IT), the amount of data stored in databases is dramatically on the rise. Analyzing the stored data and converting it to information and knowledge which is applicable in organizations requires powerful instruments. As with other economic sectors...

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Main Authors: payam hanfi zadeh, neda rastkhiz paydar
Format: Article
Language:fas
Published: Allameh Tabataba'i University Press 2014-07-01
Series:Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
Subjects:
Online Access:http://jims.atu.ac.ir/article_175_3779169272ca9c946d2eff21b5578b88.pdf
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spelling doaj-b2c856051a0048879fbf24e4e3baa6ff2020-11-25T00:26:48ZfasAllameh Tabataba'i University PressMuṭāli̒āt-i Mudīriyyat-i Ṣan̒atī2251-80292014-07-0111307797isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Companypayam hanfi zadehneda rastkhiz paydarDue to the sharp rise of the information technology (IT), the amount of data stored in databases is dramatically on the rise. Analyzing the stored data and converting it to information and knowledge which is applicable in organizations requires powerful instruments. As with other economic sectors, recognizing and attracting low-risk and profitable customers are of high significance for insurance industry. Car insurance is one of the most important insurance branches which accounts for a great deal of portfolio of insurance industry. Risk segmentation of policyholders on the basis of observable features can help insurance companies to reduce loss, raise the rate of insurance coverage, and prevent them from making an inappropriate choice in the insurance market. In this study, the segmentation of comprehensive car insurance customers on the basis of risk was selected through self-organizing map and K-means. At first, the effective factors on the risk of policyholders are identified. Then, the insurance policyholders are segmented using the proposed SOM and K-means. Customers’ characteristics in every cluster are identified. Finally, the two methods compared with each other. The advantages and disadvantages of them illustratedhttp://jims.atu.ac.ir/article_175_3779169272ca9c946d2eff21b5578b88.pdfCustomer segmentation; self-organizing map; k-means; Comprehensive auto insurance
collection DOAJ
language fas
format Article
sources DOAJ
author payam hanfi zadeh
neda rastkhiz paydar
spellingShingle payam hanfi zadeh
neda rastkhiz paydar
isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
Customer segmentation; self-organizing map; k-means; Comprehensive auto insurance
author_facet payam hanfi zadeh
neda rastkhiz paydar
author_sort payam hanfi zadeh
title isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
title_short isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
title_full isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
title_fullStr isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
title_full_unstemmed isk Based Comparison between two data mining methods in segmentation of car insurance customers (Case Study: Mellat Insurance Company
title_sort isk based comparison between two data mining methods in segmentation of car insurance customers (case study: mellat insurance company
publisher Allameh Tabataba'i University Press
series Muṭāli̒āt-i Mudīriyyat-i Ṣan̒atī
issn 2251-8029
publishDate 2014-07-01
description Due to the sharp rise of the information technology (IT), the amount of data stored in databases is dramatically on the rise. Analyzing the stored data and converting it to information and knowledge which is applicable in organizations requires powerful instruments. As with other economic sectors, recognizing and attracting low-risk and profitable customers are of high significance for insurance industry. Car insurance is one of the most important insurance branches which accounts for a great deal of portfolio of insurance industry. Risk segmentation of policyholders on the basis of observable features can help insurance companies to reduce loss, raise the rate of insurance coverage, and prevent them from making an inappropriate choice in the insurance market. In this study, the segmentation of comprehensive car insurance customers on the basis of risk was selected through self-organizing map and K-means. At first, the effective factors on the risk of policyholders are identified. Then, the insurance policyholders are segmented using the proposed SOM and K-means. Customers’ characteristics in every cluster are identified. Finally, the two methods compared with each other. The advantages and disadvantages of them illustrated
topic Customer segmentation; self-organizing map; k-means; Comprehensive auto insurance
url http://jims.atu.ac.ir/article_175_3779169272ca9c946d2eff21b5578b88.pdf
work_keys_str_mv AT payamhanfizadeh iskbasedcomparisonbetweentwodataminingmethodsinsegmentationofcarinsurancecustomerscasestudymellatinsurancecompany
AT nedarastkhizpaydar iskbasedcomparisonbetweentwodataminingmethodsinsegmentationofcarinsurancecustomerscasestudymellatinsurancecompany
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