An empirical comparison of customer behavior modeling approaches for shopping list prediction

Serhat Peker, Altan Koçyiğit, P. Eren
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引用次数: 8

Abstract

Shopping list prediction is a crucial task for companies as it can enable to provide a specific customer a personalized list of products and improve customer satisfaction and loyalty as well. To predict customer behaviors, many studies in the literature have employed customer behavior modeling approaches which are individual-level and segment-based. However, previous efforts to predict customers' shopping lists have rarely employed these state-of-the-art approaches. In this manner, this paper introduces the segment based approach into the shopping list prediction and then presents an empirical comparison of the individual-level and the segment-based approaches in this problem. For this purpose, well-known machine learning classifiers and customers' purchase history are employed, and the comparison is performed on a real-life dataset by conducting a series of experiments. The results suggest that there is no clear winner in this comparison and the performances of customer behavior modeling approaches depend on the machine learning algorithm employed. The study can help researchers and practitioners to understand different aspects of using customer behavior modeling approaches in the shopping list prediction.
购物清单预测中顾客行为建模方法的实证比较
购物清单预测对于企业来说是一项至关重要的任务,因为它可以为特定的客户提供个性化的产品清单,并提高客户的满意度和忠诚度。为了预测顾客行为,文献中的许多研究都采用了基于个体水平和细分市场的顾客行为建模方法。然而,之前预测顾客购物清单的努力很少采用这些最先进的方法。在此基础上,本文将基于分段的方法引入到购物清单预测中,并对基于个人层面的方法和基于分段的方法进行了实证比较。为此,使用了知名的机器学习分类器和客户的购买历史,并通过一系列实验在现实数据集上进行比较。结果表明,在这种比较中没有明显的赢家,客户行为建模方法的性能取决于所采用的机器学习算法。本研究可以帮助研究者和实践者了解在购物清单预测中使用顾客行为建模方法的不同方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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