Next basket recommender systems (NBRs) aim to recommend a user's next (shopping) basket of items via modeling the user's preferences towards items based on the user's purchase history, usually a sequence of historical baskets. Due to its wide applicability in the real-world E-commerce industry, the studies NBR have attracted increasing attention in recent years. NBRs have been widely studied and much progress has been achieved in this area with a variety of NBR approaches having been proposed. However, an important issue is that there is a lack of a systematic and unified evaluation over the various NBR approaches. Different studies often evaluate NBR approaches on different datasets, under different experimental settings, making it hard to fairly and effectively compare the performance of different NBR approaches. To bridge this gap, in this work, we conduct a systematical empirical study in NBR area. Specifically, we review the representative work in NBR and analyze their cons and pros. Then, we run the selected NBR algorithms on the same datasets, under the same experimental setting and evaluate their performances using the same measurements. This provides a unified framework to fairly compare different NBR approaches. We hope this study can provide a valuable reference for the future research in this vibrant area.
翻译:下一个篮子建议系统(NBR)旨在通过模拟用户对基于用户购买历史的项目的偏好来建议用户下一个(购物)篮子(购物)项目,通常是一个历史篮子的顺序。由于在现实电子商务行业的广泛适用性,NBR研究近年来已引起越来越多的注意。NBR已经进行了广泛研究,并在这一领域取得了很大进展,提出了各种NBR方法。然而,一个重要问题是缺乏对各种NBR方法的系统和统一评价。不同研究经常评价不同试验环境中不同数据集的NBR方法,使得很难公平和有效地比较不同NBR方法的绩效。为了缩小这一差距,我们在NBR领域进行了系统的经验研究。具体地说,我们审查了NBR的代表工作,分析了他们之间的共和共性。然后,我们在相同的实验设置下对同一数据集进行了选定的NBR算法,并用同样的测量来评价其绩效。我们在这项工作中提供了一个统一框架,以便比较不同的NBR方法。我们可以在未来的研究中公平地比较新的NBR方法。