ROSE:通过学习样本和特征偏好来评估零售网点

Bin Zhang, Ming Xie, Jinyan Shao, Wenjun Yin, Jin Dong
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引用次数: 1

摘要

在当前竞争激烈的零售市场中,零售企业选择好的地点或地点开店是至关重要的。然而,在实际业务应用程序中评估站点的好坏是一个复杂的问题。也就是如何判断一个店铺选址周边的市场是否好?我们不知道网站好坏的确切机制,也很难有正确的网站好坏值作为监督标签。Retail Outlet Site Evaluation (ROSE)工具是通过整合城市地理和人口统计数据以及样本偏好和特征偏好两种专家知识来学习站点评估模型。特征偏好信息可以帮助极大地减少所需的样本偏好数量。它使我们的应用程序切实可行,因为在对数百个数据点进行排序时,专家几乎不可能手动给出如此数量的样本偏好对。在实验和案例研究部分,我们证明了ROSE工具可以取得良好的效果,并且可以帮助用户在实际案例中进行站点评估工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ROSE: retail outlet site evaluation by learning with both sample and feature preference
It is critical for retail enterprises to select good sites or locations to open their stores, especially in current competitive retail market. However, evaluating the goodness of sites in real business applications is a complex problem. That is, how to judge whether the market around a store site is good? We don't know the exact mechanism of how a site can be good and it is hard to have correct site goodness values as supervised labels. The Retail Outlet Site Evaluation (ROSE) tool is designed to learn the site evaluation model by integrating city geographic & demographic data and two kinds of expert knowledge: sample preference and feature preference. The feature preference information can help greatly reduce the required number of sample preferences. It enables our application practicable because it is almost impossible to give such amount of sample preference pairs manually by experts when ranking hundreds of data points. In the experiment and case study part, we show that the ROSE tool can achieve good results and useful for users to do site evaluation work in real cases.
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