Segmentation using Customers Lifetime Value: Hybrid K-means Clustering and Analytic Hierarchy Process

Radit Rahmadhan, Meditya Wasesa
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引用次数: 1

Abstract

Background: Understanding customers’ electricity consumption patterns is essential for developing predictive analytics, which is needed for effective supply and demand management. Objective: This study aims to understand customers’ segmentation and consumption behaviour using a hybrid approach combining the K-Means clustering, customer lifetime value concept, and analytic hierarchy process. Methods: This study uses more than 16 million records of customers’ electricity consumption data from January 2019 to December 2020. The K-Means clustering identifies the initial market segments. The results were then evaluated and validated using the customer lifetime value concept and analytical hierarchy process. Results: Three customer segments were identified. Segment 1 has 282 business customers with a total capacity of 938,837 kWh, peak load usage of 27,827 kWh, and non-peak load usage of 115,194 kWh. Segment 2 has 508,615 business customers with a total capacity of 4,260 kWh, a peak load of 35 kWh, and a non-peak load of 544 kWh. Segment 3 has 37 business customers with a total capacity of 2,226,351 kWh, a peak load of 123.297 kWh, and a non-peak load of 390,803. Conclusion: A business strategy that could be taken is to base customer relationship management (CRM) on the three-customer segmentation. For the least profitable segment, aside from retail account marketing, a continuous partnership program is needed to increase electricity consumption during the non-peak period. For the highly and moderately profitable segments, a premium business-to-business approach can be applied to accommodate their increasing energy consumption without excessive electricity use in the peak period. Special account executives need to be deployed to handle these customers.
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基于客户终身价值的细分:混合k均值聚类和层次分析法
背景:了解客户的电力消费模式对于开发预测分析至关重要,这是有效的供需管理所必需的。目的:本研究旨在运用k均值聚类、顾客终身价值概念和层次分析法相结合的混合方法来了解顾客细分和消费行为。方法:本研究使用了2019年1月至2020年12月的1600多万条客户用电量数据记录。K-Means聚类识别初始细分市场。然后使用客户生命周期价值概念和层次分析法对结果进行评估和验证。结果:确定了三个客户群。分部1拥有282个商业客户,总容量为938,837千瓦时,峰值负荷使用量为27,827千瓦时,非峰值负荷使用量为115,194千瓦时。细分市场2拥有508,615个商业客户,总容量为4,260 kWh,峰值负荷为35 kWh,非峰值负荷为544 kWh。细分市场3拥有37个商业客户,总容量2,226,351 kWh,峰值负荷123.297 kWh,非峰值负荷390,803 kWh。结论:一个可以采取的商业策略是基于三个客户细分的客户关系管理(CRM)。对于利润最低的部分,除了零售客户营销外,还需要一个持续的合作伙伴计划,以增加非高峰期间的用电量。对于高利润和中等利润的细分市场,可以采用优质的企业对企业方法,以适应其不断增加的能源消耗,而不会在高峰时期过度使用电力。需要部署专门的客户主管来处理这些客户。
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