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An improved collaborative filtering approach for predicting cross-category purchases based on binary market basket data

机译:一种改进的协作过滤方法,用于基于二值市场篮子数据预测跨类别购买

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摘要

Retail managers have been interested in learning about cross-category purchase behavior of their customers for a fairly long time. More recently, the task of inferring cross-category relationship patterns among retail assortments is gaining attraction due to its promotional potential within recommender systems used in online environments. Collaborative filtering algorithms are frequently used in such settings for the prediction of choices, preferences and/or ratings of online users. This paper investigates the suitability of such methods for situations when only binary pick-any customer information (i.e., choiceon-choice of items, such as shopping basket data) is available. We present an extension of collaborative filtering algorithms for such data situations and apply it to a real-world retail transaction dataset. The new method is benchmarked against more conventional algorithms and can be shown to deliver superior results in terms of predictive accuracy.
机译:零售经理很长时间以来一直对了解客户的跨类别购买行为感兴趣。最近,由于其在在线环境中使用的推荐器系统中的促销潜力,推断零售类别之间的跨类别关系模式的任务越来越受到关注。在此类设置中经常使用协作过滤算法来预测在线用户的选择,偏好和/或等级。本文研究了这种方法适用于仅提供二元提货的任何顾客信息(即商品的选择/非选择,例如购物篮数据)的情况的适用性。我们提出了针对此类数据情况的协作过滤算法的扩展,并将其应用于现实世界中的零售交易数据集。该新方法已针对更常规的算法进行了基准测试,可以显示出在预测准确性方面的出色结果。

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