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Towards Explainable Direct Marketing in the Telecom Industry Through Hybrid Machine Learning

机译:通过混合机器学习来解释电信行业的直接营销

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Direct marketing enables businesses to identify customers that could be interested in product offerings based on historical customer transactions data. Several machine learning (ML) tools are currently being used for direct marketing. However, the disadvantage of ML algorithmic models is that even though results could be accurate, they lack relevant explanations. The lack of detailed explanations that justify recommendations has led to reduced trust in ML-based recommendations for decision making in some critical real-world domains. The telecommunication domain has continued to witness a decline of revenue in core areas such as voice and text messaging services which make direct marketing useful to increase profit. This paper presents the conceptual design of a machine learning process framework that will enable telecom subscribers that should be targeted for direct marketing of new products to be identified, and also provide explanations for the recommendations. To do this, a hybrid framework that employs supervised learning, case-based reasoning and rule-based reasoning is proposed. The operational workflow of the framework is demonstrated with an example, while the plan of implementation and evaluation are also discussed.
机译:直接营销使企业能够根据历史客户交易数据识别可能对产品提供感兴​​趣的客户。目前正在使用几种机器学习(ML)工具进行直接营销。然而,ML算法模型的缺点是,即使结果可能是准确的,它们缺乏相关的解释。缺乏合理建议的详细解释导致在一些关键的现实域名的决策中减少了基于ML的建议。电信领域继续见证核心领域的收入下降,如语音和短信服务,这使得直接营销可以增加利润。本文介绍了机器学习过程框架的概念设计,使得电信用户应该有针对性的,以便直接营销待定的新产品,并为该建议提供解释。为此,提出了一种采用监督学习,基于案例的推理和规则的推理的混合框架。框架的操作工作流程将通过一个例子进行说明,而实施和评估计划也在讨论。

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