Decision influence and proactive sale support in a chain of convenience stores

Stefan Dlugolinsky, Giang T. Nguyen, Martin Seleng, L. Hluchý
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引用次数: 3

Abstract

This paper presents a work in progress and initial design of a recommender system (RS) for active sale support within a large network of brick and mortar (or convenience) stores. There have been two datasets of historical transactional data provided for the pilot experiments. Each store consists of two kinds of shops; i.e., retail and cafeteria. Although these datasets contain various information about transactions, at our first experiment, they contain just a few information leading to customer identification and thus neither collaborative filtering nor content based techniques can be applied. Therefore, item co-occurrence approach and Naïve Bayes principle are chosen in order to build initial recommendation models with first promising results. Furthermore, discussions and solutions related to many real problems such as data sparsity, embedding of available features into recommendation models, benefits of item categorization, offline evaluation of proposed approaches over historical data, scalability and future personalization are presented in the work. Provided datasets are from real production and have larger sizes and required pre-processing and data transformation for efficient data manipulation and analysis. Various statistics and characteristics of transactional data are provided for practical view when working with similar kind of data, which can be interesting and useful for readers with similar research interests.
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在连锁便利店的决策影响和积极的销售支持
本文介绍了一项正在进行的工作和推荐系统(RS)的初步设计,用于在大型实体(或便利)商店网络中进行主动销售支持。已经为试点实验提供了两个历史事务数据集。每个商店由两类商店组成;即零售和自助餐厅。虽然这些数据集包含有关交易的各种信息,但在我们的第一个实验中,它们只包含一些导致客户识别的信息,因此既不能应用协作过滤技术,也不能应用基于内容的技术。因此,我们选择项目共现方法和Naïve贝叶斯原理来构建初始的推荐模型,初步得到有希望的结果。此外,本文还讨论了与许多实际问题相关的解决方案,如数据稀疏性、在推荐模型中嵌入可用特征、项目分类的好处、所提出方法对历史数据的离线评估、可扩展性和未来个性化。提供的数据集来自实际生产,规模较大,需要预处理和数据转换,以实现有效的数据操作和分析。在处理类似类型的数据时,提供了事务数据的各种统计数据和特征,这对于具有相似研究兴趣的读者来说可能是有趣和有用的。
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