智能全渠道零售中的线下渠道规划

Jian Chen, Yong Liang, Hao Shen, Z. Shen, Mengying Xue
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引用次数: 9

摘要

问题定义:观察到零售行业不可避免地向全渠道发展,我们研究了一个离线渠道规划问题,该问题帮助全渠道零售商在其离线渠道中做出门店位置和位置相关的分类决策,以实现在线和离线渠道的利润最大化,考虑到客户的购买决策不仅取决于他们对产品的偏好,还取决于他们在不同渠道之间的估值差异,以及所产生的麻烦成本。学术/实践相关性:提出的模型和解决方法扩展了零售渠道管理,全渠道分类规划以及更广泛的智能零售/城市领域的文献。方法:我们推导参数化模型来捕捉客户的渠道选择和产品选择行为,并采用期望最大化方法定制相应的参数估计方法。为了求解NP-hard优化模型,我们建立了一个可处理的混合整数二阶二次规划(MISOCP)重公式,并探索了该重公式的结构性质,推导出了封闭形式的强化切割。结果:我们在数值上验证了所提出的解决方法的有效性,并演示了参数估计方法。我们进一步从使用真实数据集的数值研究中得出管理见解。管理启示:我们验证了全渠道零售商应该提供与位置相关的离线分类。此外,我们的基准研究揭示了共同确定线下门店位置和品类,以及在制定线下渠道规划决策时纳入线上渠道的必要性和重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offline-Channel Planning in Smart Omnichannel Retailing
Problem definition: Observing the retail industry inevitably evolving into omnichannel, we study an offline-channel planning problem that helps an omnichannel retailer make store location and location-dependent assortment decisions in its offline channel to maximize profit across both online and offline channels, given that customers’ purchase decisions depend on not only their preferences across products but also their valuation discrepancies across channels, as well as the hassle costs incurred. Academic/practical relevance: The proposed model and the solution approach extend the literature on retail channel management, omnichannel assortment planning, and the broader field of smart retailing/cities. Methodology: We derive parameterized models to capture customers’ channel choice and product choice behaviors, and customize a corresponding parameter estimation approach employing the expectation-maximization method. To solve the NP-hard optimization model, we develop a tractable mixed-integer second-order conic programming (MISOCP) reformulation and explore the structural properties of the reformulation to derive strengthening cuts in closed-form. Results: We numerically validate the efficacy of the proposed solution approach and demonstrate the parameter estimation approach. We further draw managerial insights from the numerical studies using real data sets. Managerial implications: We verify that omnichannel retailers should provide location-dependent offline assortments. In addition, our benchmark studies reveal the necessity and significance of jointly determining offline store locations and assortments, as well as of incorporating the online channel while making offline-channel planning decisions.
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