Recent years brought an increasing interest in the application of machine learning algorithms in e-commerce, omnichannel marketing, and the sales industry. It is not only to the algorithmic advances but also to data availability, representing transactions, users, and background product information. Finding products related in different ways, i.e., substitutes and complements is essential for users' recommendations at the vendor's site and for the vendor - to perform efficient assortment optimization. The paper introduces a novel method for finding products' substitutes and complements based on the graph embedding Cleora algorithm. We also provide its experimental evaluation with regards to the state-of-the-art Shopper algorithm, studying the relevance of recommendations with surveys from industry experts. It is concluded that the new approach presented here offers suitable choices of recommended products, requiring a minimal amount of additional information. The algorithm can be used in various enterprises, effectively identifying substitute and complementary product options.
翻译:近年来,人们越来越关注在电子商务、全网营销和销售行业中应用机器学习算法的问题,这不仅涉及算法进步,而且涉及数据提供,代表交易、用户和背景产品信息。寻找以不同方式相关的产品,即替代品和补充产品,对于供应商所在地的用户建议和供应商实施高效的分类优化至关重要。本文介绍了一种寻找产品替代物和根据嵌入克利奥拉算法的图表加以补充的新颖方法。我们还提供了关于最先进的随机算法的实验性评价,与行业专家的调查研究建议的相关性。得出的结论是,此处介绍的新方法提供了推荐产品的合适选择,需要最低限度的额外信息。这一算法可以用于各个企业,有效地确定替代和补充产品选项。