Intelligent Model for Customer Churn Prediction using Deep Learning Optimization Algorithms

A. Abualkishik, R. .., William Thompson
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引用次数: 0

Abstract

Business intelligence (BI) mentions to the technical and procedural structure which gathers, supplies, and examines the data formed by company action. BI is a wide term that includes descriptive analytics, procedure analysis, data mining, and performance benchmarking. Customer churn is a general problem across businesses from several sectors. Companies are working always for improving their supposed quality by way of providing timely and quality service to its customer. Customer churn is developed most initial challenges which several firms were facing currently. Many churn prediction techniques and methods were presented before in literature for predicting customer churn from the domains like telecom, finance, banking, and so on. Researchers are also working on customer churn prediction (CCP) from e-commerce utilizing data mining and machine learning (ML) approaches. This manuscript focuses on the development of Stacked Deep Learning with Wind Driven Optimization based Business Intelligence for Customer Churn Prediction model. The proposed model is considered an intelligent system that applies golden sine algorithm (GSA) based feature selection approach to derive a set of features. In addition, the stacked gated recurrent unit (SGRU) model is applied for the prediction of customer churns.
基于深度学习优化算法的客户流失预测智能模型
商业智能(BI)指的是收集、提供和检查由公司行为形成的数据的技术和程序结构。BI是一个广泛的术语,包括描述性分析、过程分析、数据挖掘和性能基准测试。客户流失是各行各业普遍存在的问题。公司一直在努力通过向客户提供及时、优质的服务来提高他们的预期质量。客户流失是目前许多公司面临的最主要的挑战。文献中提出了许多客户流失预测技术和方法,用于预测电信、金融、银行等领域的客户流失。研究人员还在利用数据挖掘和机器学习(ML)方法研究电子商务中的客户流失预测(CCP)。本文重点介绍了基于风驱动优化的商业智能堆栈深度学习的开发,用于客户流失预测模型。该模型被认为是一个应用基于金正弦算法(GSA)的特征选择方法来导出一组特征的智能系统。此外,将叠门控循环单元(SGRU)模型应用于客户流失预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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