Optimizing Online Promotion Planning: A Multi-Objective, Multi-Market, Multi-Period Approach

Yuanchun Jiang, J. Shang, Pinar Yildirim
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Abstract

This study focuses on retail promotion planning problem in a multi-objective, multimarket and multi-period framework and concomitantly addresses the following questions: What are the conditions for a retailer to offer an online promotion to all or a select set of the markets it is operating in? How should the retailer select the partial set of markets to offer a promotion? How should the selection of promotion period and markets be coordinated? Starting from a simple two market, single-period scenario, we gradually build our model to address the large scale promotion coordination problem via a multi-objective evolutionary algorithm with decomposition and pareto local search" (MOEA/D-PLS). The proposed algorithm allows retailers to coordinate online price promotions in multiple retail markets over multiple periods, minimizing demand leakage from offline to online channels and preventing demand drain and stock-outs. It decomposes the complex multi-objective optimization problem into a set of single-objective optimization problems, and uses an evolutionary algorithm to solve each problem simultaneously, improving the quality of solutions via a problem-specific Pareto local search method. This method allows large scale promotion planning problem, which is computationally non-trivial, to be solved optimally in an efficient manner. To demonstrate the proposed methodology, we discuss a numerical implementation of the algorithm using data from a large nation-wide pizza chain.
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优化网络推广计划:多目标、多市场、多时期的方法
本研究主要关注多目标、多市场和多时期框架下的零售促销计划问题,并同时解决以下问题:零售商向其所经营的所有或部分市场提供在线促销的条件是什么?零售商应该如何选择部分市场来提供促销?促销期和市场的选择应如何协调?从简单的两个市场,单周期场景开始,我们逐步建立模型,通过分解和帕累托局部搜索的多目标进化算法来解决大规模的推广协调问题。该算法允许零售商协调多个零售市场在多个时期的在线价格促销,最大限度地减少从线下到线上渠道的需求泄漏,防止需求枯竭和缺货。该算法将复杂的多目标优化问题分解为一组单目标优化问题,并采用进化算法同时求解每个问题,通过针对特定问题的Pareto局部搜索方法提高解的质量。该方法使大规模促销计划问题这一计算上不平凡的问题能够以一种高效的方式得到最优解。为了演示所提出的方法,我们讨论了该算法的数值实现,使用来自大型全国性披萨连锁店的数据。
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