电信行业使用可解释性和AutoML的集成客户分析

Sai Tejashwin Eswarapu, Sesharhri S, Yashwanth Deshaboina, Bhargawa P., Ashly Ann Jo, Ebin Deni Raj
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引用次数: 0

摘要

本研究提供了一个使用复杂的黑盒自动化管道建模集成客户分析框架的前景,同时提供了主要在两个用例中提供给客户数据的预测的见解和解释:客户流失和客户细分。在进行文献综述之后,已经衍生出一个管道,使用监督和非监督模型集成用例,并使用XAI技术获得解释。在得到预期结果的模型上进行了实验,并进行了公平性检查,以检查预测和解释的完整性。本研究的目的是使客户分析过程自动化,从而获得相对更好的性能,而无需从头开始构建人工管道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated Customer Analytics using Explainability and AutoML for Telecommunications
This research study provides an outlook on modeling an integrated customer analytic framework using complex black-box AutoML pipelines while providing insights and explanations to the predictions provided to the customer data mainly in two use cases: Customer Churn and Customer Segmentation. Upon the Literature Review conducted, a pipeline has been derived to integrate both the use cases using supervised and unsupervised models, and explanations were obtained using XAI techniques. The experiments were conducted on the model with desired results and fairness checks were done to check the integrity of the predictions and explanations. The purpose of this research study is to automate the customer analysis process with a comparatively better performance without building a manual pipeline from scratch.
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