Cross-market recommendation aims to recommend products to users in a resource-scarce target market by leveraging user behaviors from similar rich-resource markets, which is crucial for E-commerce companies but receives less research attention. In this paper, we present our detailed solution adopted in the cross-market recommendation contest, i.e., WSDM CUP 2022. To better utilize collaborative signals and similarities between target and source markets, we carefully consider multiple features as well as stacking learning models consisting of deep graph recommendation models (Graph Neural Network, DeepWalk, etc.) and traditional recommendation models (ItemCF, UserCF, Swing, etc.). Furthermore, We adopt tree-based ensembling methods, e.g., LightGBM, which show superior performance in prediction task to generate final results. We conduct comprehensive experiments on the XMRec dataset, verifying the effectiveness of our model. The proposed solution of our team WSDM_Coggle_ is selected as the second place submission.
翻译:跨市场建议旨在向资源匮乏目标市场用户推荐产品,利用来自类似丰富资源市场的用户行为,这对电子商务公司至关重要,但得到的研究关注较少。在本文件中,我们介绍了在跨市场建议竞赛中采用的详细解决办法,即WSDM CUP 2022。为了更好地利用目标市场和源市场之间的协作信号和相似之处,我们仔细考虑了多种特点以及堆叠学习模型,其中包括深图建议模型(Graph Neural Network, DeepWalk等)和传统建议模型(TrootCF, UseerCF, Swing等)。此外,我们采用了基于树木的组合方法,例如LightGBM,这些方法显示预测任务中的优异性表现,以产生最终结果。我们在XMREc数据集上进行了全面实验,核查了我们模型的有效性。我们团队的WSDDM_Cogle_的拟议解决方案被选为第二个提交文件。