使用个人消费者模型构建智能购物助手

Chad M. Cumby, A. Fano, R. Ghani, Marko Krema
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引用次数: 31

摘要

本文介绍了一种为安装在购物车上的平板电脑设计的智能购物助手,它可以实现与顾客的个性化互动。我们使用机器学习算法来预测客户当前行程的购物清单,并将该清单呈现在设备上。当他们浏览商店时,个性化的促销活动将使用从每个人的会员卡数据派生的消费者模型来呈现。为了让购物助理设备发挥作用,我们认为它们必须由针对个人客户进行调整的算法驱动,并能对个人行为做出准确预测。我们正式将购物清单预测作为一个分类问题,描述了我们系统背后的算法和方法,并表明购物清单预测可以具有高水平的准确性、精度和召回率。除了购物清单的预测之外,我们简要介绍了购物助理项目的其他方面,例如使用消费者模型来选择合适的促销策略,以及开发促销计划模拟工具,使零售商能够计划通过这种购物助理交付的个性化促销活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building intelligent shopping assistants using individual consumer models
This paper describes an Intelligent Shopping Assistant designed for a shopping cart mounted tablet PC that enables individual interactions with customers. We use machine learning algorithms to predict a shopping list for the customer's current trip and present this list on the device. As they navigate through the store, personalized promotions are presented using consumer models derived from loyalty card data for each inidvidual. In order for shopping assistant devices to be effective, we believe that they have to be powered by algorithms that are tuned for individual customers and can make accurate predictions about an individual's actions. We formally frame the shopping list prediction as a classification problem, describe the algorithms and methodology behind our system, and show that shopping list prediction can be done with high levels of accuracy, precision, and recall. Beyond the prediction of shopping lists we briefly introduce other aspects of the shopping assistant project, such as the use of consumer models to select appropriate promotional tactics, and the development of promotion planning simulation tools to enable retailers to plan personalized promotions delivered through such a shopping assistant.
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