Constrained Optimization with Genetic Algorithm: Improving Profitability of Targeted Marketing

G. Cui, M. Wong, Xiang Wan
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引用次数: 2

Abstract

Direct marketing forecasting models have focused on estimating the response probabilities of consumer purchases and neglected the profitability of customers. This study proposes a method of constrained optimization using genetic algorithm to maximize the profitability at the top deciles of a customer list. We apply this method to a direct marketing dataset using tenfold cross validation. The results from this method compare favorably with the unconstrained model and that of the DMAX model. The method of constrained optimization has distinctive advantages in augmenting the profitability of direct marketing campaigns. We explore the implications for targeted marketing problems and for assisting management decision-making and augmenting profitability of direct marketing.
遗传算法约束优化:提高目标营销的盈利能力
直销预测模型侧重于估计消费者购买的反应概率,而忽略了消费者的盈利能力。本研究提出一种使用遗传算法的约束优化方法,以最大化客户名单前十分位数的盈利能力。我们将这种方法应用于使用十倍交叉验证的直接营销数据集。该方法与无约束模型和DMAX模型的计算结果进行了比较。约束优化方法在提高直销活动的盈利能力方面具有明显的优势。我们探讨了目标营销问题的影响,并协助管理决策和增加直接营销的盈利能力。
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