RFM和分类预测建模提高响应预测率

Tristan Lim
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摘要

在消费电子产品中,销售周期约为两到三年,随着供应商在在线分销渠道中面临的竞争和产品差异化的加剧,通过使用预测分析来关注在线消费电子产品销售中的目标营销是很重要的,因为营销模式正变得越来越以客户为中心,由于响应率低,未经请求的营销通常是昂贵和无效的。在本研究中,客户预测分析技术,包括最近频率货币(或RFM)方法和经典分类建模方法-逻辑回归,决策树,神经网络和集成模型-用于提高预测精度。神经网络模型的结果表明,与RFM模型相比,神经网络模型的积极响应率提高了2倍以上,从42.9%提高到87.2%。但是,如果需要更强的可解释性,可以使用决策树模型,虽然会牺牲2%左右的预测精度。该研究讨论了预测建模有助于提高积极响应率目标的性能,以及改进采样和降低计算能力的好处,特别是在大量数据集的情况下。在实际实现中,公司必须理解模型的分类能力和营销活动目标是持续改进的过程。这些过程随着从基线到公司管理层设定的目标阈值水平的每次迭代而改进。应该对假阳性交易进行调查,以将研究结果纳入未来模型的改进中。
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RFM and Classification Predictive Modelling to Improve Response Prediction Rate
In consumer electronics where sales cycle is about two to three years, and with increased competition and product differentiation faced by suppliers in online distribution channels, it is important to pay attention to targeted marketing in online consumer electronics sales through the use of predictive analytics, as marketing paradigm is becoming increasingly customer-focused and unsolicited marketing is often costly and ineffective due to low response rates. In this study, customer predictive analytical techniques, including the RecencyFrequency Monetary (or RFM) method and classical classification modelling methods – logistic regression, decision tree, neural network and ensemble models – are utilized to improve predictive accuracy. Results from the neural network model shows a significant improvement over RFM model, with positive response rates improving by more than 2x, from 42.9% to 87.2%. However, if stronger explanability power is preferred, decision tree model may be utilized, although predictive accuracy of about 2% is sacrificed. The study discusses predictive modelling useful to improve the performance of positive response rate targeting, alongside the benefits of improved sampling and reduced computing power, especially with significantly large datasets. In real life implementation, it is imperative that companies understand that classification power of the models and marketing campaign targeting are continuous improvement processes. These processes improve with every iteration from its baseline towards its objective threshold level set by the companies’ management. False positive transactions should be investigated, with the effect of incorporating the findings to the improvement of models going forward.
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