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Including spatial interdependence in customer acquisition models: A cross-category comparison

机译:在客户获取模型中包括空间相互依赖性:跨类别比较

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摘要

Within analytical customer relationship management (CRM), customer acquisition models suffer the most from a lack of data quality because the information of potential customers is mostly limited to socio-demographic and lifestyle variables obtained from external data vendors. Particularly in this situation, taking advantage of the spatial correlation between customers can improve the predictive performance of these models. This study compares an autoregressive and hierarchical technique that both are able to incorporate spatial information in a model that can be applied on large datasets, which is typical for CRM. Predictive performances of these models are compared in an application that identifies potential new customers for 25 products and brands. The results show that when a discrete spatial variable is used to group customers into mutually exclusive neighborhoods, a multilevel model performs at least as well as, and for a large number of durable goods even significantly better than a frequently used autologistic model. Further, this application provides interesting insights for marketing decision makers. It indicates that especially for publicly consumed durable goods neighborhood effects can be identified. However, for more exclusive brands, incorporating spatial information will not always result in major predictive improvements. For these luxury products, the high spatial interdependence is mainly caused by homoph-ily in which the spatial variable is a substitute for absent socio-demographic and lifestyle variables. As a result, these neighborhood variables lose a lot of predictive value on top of a traditional acquisition model that typically is based on such non-transactional variables.
机译:在分析客户关系管理(CRM)中,客户获取模型受数据质量缺乏的影响最大,因为潜在客户的信息主要限于从外部数据供应商处获得的社会人口统计数据和生活方式变量。特别是在这种情况下,利用客户之间的空间相关性可以改善这些模型的预测性能。这项研究比较了自回归和分层技术,两者都能够将空间信息合并到可应用于大型数据集的模型中,这是CRM的典型特征。在一个应用程序中比较了这些模型的预测性能,该应用程序确定了25个产品和品牌的潜在新客户。结果表明,当使用离散的空间变量将客户分组到互斥的邻域中时,多层模型的性能至少要好于后者,并且对于大量耐用品而言,其性能甚至要比经常使用的自动物流模型好得多。此外,该应用程序为营销决策者提供了有趣的见解。这表明,特别是对于公共消费的耐用品,可以确定邻里效应。但是,对于更多独家品牌而言,合并空间信息并不总是可以带来重大的预测改进。对于这些奢侈品,高度的空间依赖性主要是由同质性引起的,其中空间变量可以替代缺少的社会人口统计学和生活方式变量。结果,这些邻域变量在通常基于此类非事务变量的传统采集模型之上失去了很多预测价值。

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