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Incremental Response Modeling Based on Segmentation Approach Using Uplift Decision Trees

机译:基于分段方法的提升决策树增量响应建模

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Data mining methods have been successfully used in direct marketing to model the behavior of responders. But these response models do not take in account, the behavior of customers who would take an action irrespective of marketing action. Redundant marketing communications sometimes annoy the customer and reduce the brand value of the company. Accurate targeting of customers also reduces direct marketing cost. Incremental response modeling aims to predict the behavior of customers who respond positively only in the case of marketing. In this paper, we propose a two-step approach for incremental response modeling. In the first step, we segment the data using uplift decision trees using traditional and modified divergence metrics. Then, in the second step we use the standard incremental response modeling methods. Experiments on real world direct marketing campaign data showed that the proposed method outperforms the uplift decision trees.
机译:数据挖掘方法已成功用于直接营销中,以对响应者的行为进行建模。但是,这些响应模型并未考虑将采取行动的客户的行为,而与市场行为无关。冗余的营销传播有时会打扰客户,并降低公司的品牌价值。准确定位客户也可以降低直接营销成本。增量响应建模旨在预测仅在营销情况下做出积极响应的客户的行为。在本文中,我们提出了一种用于增量响应建模的两步方法。第一步,我们使用提升决策树(使用传统和改进的差异度量)对数据进行细分。然后,在第二步中,我们使用标准的增量响应建模方法。对现实世界中直接营销活动数据的实验表明,该方法优于提升决策树。

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