A Strategy to Identify Loyalty Using Elbow Curve Method for Customer Segmentation

Baljeet Kaur, Jatinderkumar R. Saini
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引用次数: 1

Abstract

Customer segmentation is a very strong way to identify unsatisfied customers as well as loyal customers. It has become very crucial and mandatory for businesses to understand the customers and segment them according to their needs and desires. Many businesses struggle to manage cancellations and delays. The high number of cancellations is always a challenge for business houses. Every instance of cancellation can be a learning experience and an opportunity to understand the customers better. These insights can help businesses to improve their products and services. Now, as the usage of online gadgets has increased among customers and smart technologies are used in designing web applications, more data is available to understand customer behavior and predict their buying patterns. In the current era, customers are exposed to many online applications which pose tough competition among service providers. Businesses spend a lot to attract new customers. On the other side, retaining loyal customers is as crucial as identifying new customers. Identifying loyal customers helps to create a personalized approach that makes them feel valued. Understanding current customer priorities are more important than identifying the new customer. Machine learning is an effective technique to help segment loyal customers into actionable customers. This paper outlines the use of the K-means algorithm to identify loyal and prospective customers along with strategies to lower the cancellation rate. The current study uses the elbow curve method to identify the optimum number of clusters into which the customers could be segmented. This study will help businesses to seize new opportunities and gain customers for life.
基于肘形曲线法的顾客细分忠诚度识别策略
客户细分是识别忠实客户和不满意客户的有效方法。对于企业来说,了解客户并根据他们的需求和愿望对他们进行细分已经变得非常重要和必要。许多企业都在努力应对航班取消和航班延误。对商业机构来说,大量的取消预约一直是一个挑战。每一次取消都是一次学习的经历,也是一次更好地了解客户的机会。这些见解可以帮助企业改进产品和服务。现在,随着消费者越来越多地使用在线设备,智能技术被用于设计网络应用程序,越来越多的数据可以用来了解客户行为并预测他们的购买模式。在当今时代,客户面临着许多在线应用程序,这给服务提供商带来了激烈的竞争。企业花很多钱来吸引新客户。另一方面,留住老客户和发现新客户一样重要。确定忠诚的客户有助于创建个性化的方法,使他们感到受到重视。了解当前客户的优先级比识别新客户更重要。机器学习是一种有效的技术,可以帮助将忠诚的客户划分为可操作的客户。本文概述了使用K-means算法来识别忠诚和潜在客户以及降低取消率的策略。目前的研究使用肘形曲线方法来确定客户可以分割到的最佳簇数。这项研究将有助于企业抓住新的机会,获得终身客户。
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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