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http://dx.doi.org/10.33851/JMIS.2021.8.1.69

Implementation of Customized Variable Insurance Management System Using Data Crawling and Fund Management Algorithm  

Nam, Sung-hyun (Dept. of Artificial Intelligence, Dong-eui University)
Kwon, Soon-kak (Dept. of Computer Software Engineering, Dong-eui University)
Publication Information
Journal of Multimedia Information System / v.8, no.1, 2021 , pp. 69-74 More about this Journal
Abstract
This paper accumulates the product structure data such as bond obligation ratio and investment ratio for variable insurance using crawling from the insurance company's API, also accumulates variable insurance income and project expenses for variable insurance using crawling from the API of life insurance association. From these accumulated data, the correlation coefficient between fund product and customer preference is calculated with an investment algorithm, and variable insurance funds by customer investment preference and product structure are recommended according to market conditions. From the simulation results, it is shown that the proposed variable insurance management system properly recommends and manages variable insurance according to customer preferences.
Keywords
Fund Management; Data Crawling; Variable Insurance Management;
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