Utilizing machine learning techniques to process customer claims automatically

S. Sader
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Abstract

In this paper, Supervised Machine Learning was used to develop a new approach to handle customers’ claims which were gathered from a real-case company. Supervised machine learning was used with accurate data in order to develop a machine learning model. This model was deployed and used to evaluate new un-evaluated claims by examining their content variables and assigning a ranking value for each claim expressing its priority. The goal of this experiment was to show evidence on the ability of new technologies such as Machine Learning to automate quality management traditional activities, improve efficiency and effectiveness, and support a new approach to “Quality 4.0”. Other goals were to improve customer satisfaction by enhancing responsiveness to their claims and to convince the company (the real case of this study) to extend the project for further applications.
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利用机器学习技术自动处理客户索赔
在本文中,监督机器学习被用于开发一种新的方法来处理从真实案例公司收集的客户索赔。监督式机器学习与准确的数据一起使用,以开发机器学习模型。该模型被部署并用于评估新的未评估的索赔,方法是检查它们的内容变量,并为每个索赔分配一个表示其优先级的排序值。该实验的目的是证明机器学习等新技术能够自动化质量管理传统活动,提高效率和有效性,并支持实现“质量4.0”的新方法。其他目标是通过增强对客户要求的响应来提高客户满意度,并说服公司(本研究的真实案例)将项目扩展为进一步的应用程序。
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