营销影响最大化:归因建模的启发式模型与集合模型

Jitendra Gaur, Kumkum Bharti, Rahul Bajaj
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摘要

目的 由于客户接触的渠道多种多样,营销预算的分配变得越来越具有挑战性。本研究旨在通过引入组合归因模型来优化在线营销渠道的营销预算分配,从而增强全球营销知识。作为实证研究,本研究证明了集合模型优于独立模型。设计/方法/途径本实证研究使用了印度一家保险聚合公司的汽车保险交易数据集。该数据集包含 300 多万平台访问者的信息。通过结合两个概率模型(即马尔可夫链模型和沙普利值)的结果,创建了一个稳健的集合模型。这些结果与启发式模型进行了比较和验证。此外,还根据所使用的设备(即台式机和移动设备)对在线营销渠道和归因模型的性能进行了评估。研究结果分析了台式机和移动设备的渠道重要性图表,以了解贡献最大的在线营销渠道。客户关系管理--电子邮件和谷歌付费广告的每次点击成本被确定为台式机和移动设备的前两大营销渠道。研究表明,集合模型的准确性优于独立模型,即马尔科夫链模型和沙普利值。 原创性/价值 据作者所知,目前的研究是同类研究中首次引入集合模型来解决网络营销中的归因问题。通过使用不同设备(台式机和移动设备)与启发式模型进行比较,可以深入了解启发式模型的结果。
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Maximizing marketing impact: heuristic vs ensemble models for attribution modeling
Purpose Allocation of the marketing budget has become increasingly challenging due to the diverse channel exposure to customers. This study aims to enhance global marketing knowledge by introducing an ensemble attribution model to optimize marketing budget allocation for online marketing channels. As empirical research, this study demonstrates the supremacy of the ensemble model over standalone models. Design/methodology/approach The transactional data set for car insurance from an Indian insurance aggregator is used in this empirical study. The data set contains information from more than three million platform visitors. A robust ensemble model is created by combining results from two probabilistic models, namely, the Markov chain model and the Shapley value. These results are compared and validated with heuristic models. Also, the performances of online marketing channels and attribution models are evaluated based on the devices used (i.e. desktop vs mobile). Findings Channel importance charts for desktop and mobile devices are analyzed to understand the top contributing online marketing channels. Customer relationship management-emailers and Google cost per click a paid advertising is identified as the top two marketing channels for desktop and mobile channels. The research reveals that ensemble model accuracy is better than the standalone model, that is, the Markov chain model and the Shapley value. Originality/value To the best of the authors’ knowledge, the current research is the first of its kind to introduce ensemble modeling for solving attribution problems in online marketing. A comparison with heuristic models using different devices (desktop and mobile) offers insights into the results with heuristic models.
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