基于客户数据的保险产品定制利用学习算法

Ashwini Desai, Manasi Mathkar, Manav Nisar, G. Thampi
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引用次数: 0

摘要

随着越来越多的客户愿意用他们的数据换取更低的保费,利用客户和保险数据来生成定制的保险产品是一个强大的概念。个性化引擎通常是由机器学习算法和大数据分析驱动的。一旦收集到客户数据,就可以通过分析获得见解,然后在现成的或新颖的学习算法的帮助下,在决策中加以利用。在此过程中,一个常见的障碍是保险数据的不平衡问题,这影响了这些算法的准确性。我们对随机森林、贝叶斯网络、神经网络、Apriori算法等各种学习算法的应用进行了深入的分析。通过我们的论文,我们的目标是在讨论如何使用所有这些方法来解决行业中普遍存在的问题的同时,向客户提供定制保险产品的系统进步的清晰图景。
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Customizing Insurance Product Based On Customer Data Leveraging Learning Algorithms
With the increasing number of customers willing to trade their data in exchange for lower premiums, harnessing customer and insurance data to generate a customized insurance product is a powerful concept. Personalization engines have very often been powered by machine learning algorithms and big data analytics. Customer data once collected, can be analyzed for insights and then utilized in decision making with the help of off-the-shelf or novel learning algorithms. One common barrier in this process is the problem of imbalanced insurance data which affects the accuracy of these algorithms. We have carried out a thorough analysis of the applications of various learning algorithms such as Random Forest, Bayesian Network, Neural Network, Apriori algorithm and so on. Through our paper, we aim to present a clear picture of the advancements in systems that deliver customized insurance products to customers while discussing how all of those approaches can be used to solve problems pervasive in the industry.
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