A Column generation approach for product targeting optimisation within the banking industry ORiON: Product Targeting Optimisation

ORiON Pub Date : 2022-01-01 DOI:10.5784/38-2-750
Jean-Pierre van Niekerk
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Abstract

Product targeting optimisation within the financial sector is becoming increasingly complex as optimisation models are being exposed to an abundance of data-driven analytics and insights generated from a host of customer interactions, statistical and machine learning models as well as new operational, business, and channel requirements. However, given the expeditious change in the data environment, it is evident that the product targeting formulation cited throughout the literature has not yet been updated to align with the realistic modeling dynamics required by financial institutions. In this paper, an enhanced product targeting formulation is proposed that incorporates a large set of new modeling constraints and input parameters to try and maximise the economic profit generated by a financial institution. The proposed formulation ensures that the correct product is offered to the desired customers at the best time of day through their preferred communication medium. To solve the foregoing product targeting formulation, a novel column generation approach is presented that is capable of reducing problem complexity and in turn allowing for significantly larger problems to be solved to global optimality within a reasonable time frame.
银行业产品目标优化的列生成方法ORiON:产品目标优化
金融领域的产品目标优化正变得越来越复杂,因为优化模型正暴露于大量数据驱动的分析和见解,这些分析和见解来自大量客户交互、统计和机器学习模型,以及新的运营、业务和渠道需求。然而,考虑到数据环境的迅速变化,很明显,整个文献中引用的产品目标公式尚未更新,以符合金融机构所需的现实建模动态。本文提出了一种增强的产品定位公式,该公式结合了大量新的建模约束和输入参数,以尝试最大化金融机构产生的经济利润。建议的配方确保在一天中最好的时间通过他们喜欢的沟通媒介向他们提供正确的产品。为了解决上述产品目标配方,提出了一种新颖的列生成方法,该方法能够降低问题的复杂性,从而允许在合理的时间框架内将显着较大的问题解决为全局最优性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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