Role of Data mining in Insurance Industry
Keywords:
Applications, benefits, CRM, Data mining, Insurance industryAbstract
In the global era, Insurance systems rapidly a lot of tremendous development in our society. Due to the increased stress in day-to-day life, the growth of demand of insurance increased. Data mining helps insurance firms to discovery useful patterns from the customer database. The purpose of the paper aims to present how data mining is useful in the insurance industry, how its techniques produce good results in insurance sector and how data mining enhance in decision making using insurance data. The conceptual paper is written based on secondary study, observation from various journals, magazines and reports.
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