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Group-Buying Recommendation for Social E-Commerce

机译:社会电子商务的小组购买建议

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Group buying, as an emerging form of purchase in social e-commerce websites, such as Pinduoduo1, has recently achieved great success. In this new business model, users, initiator, can launch a group and share products to their social networks, and when there are enough friends, participants, join it, the deal is clinched. Group-buying recommendation for social e-commerce, which recommends an item list when users want to launch a group, plays an important role in the group success ratio and sales. However, designing a personalized recommendation model for group buying is an entirely new problem that is seldom explored. In this work, we take the first step to approach the problem of group-buying recommendation for social e-commerce and develop a GBGCN method (short for Group-Buying Graph Convolutional Network). Considering there are multiple types of behaviors (launch and join) and structured social network data, we first propose to construct directed heterogeneous graphs to represent behavioral data and social networks. We then develop a graph convolutional network model with multi-view embedding propagation, which can extract the complicated high-order graph structure to learn the embeddings. Last, since a failed group-buying implies rich preferences of the initiator and participants, we design a double-pairwise loss function to distill such preference signals. We collect a real-world dataset of group-buying and conduct experiments to evaluate the performance. Empirical results demonstrate that our proposed GBGCN can significantly outperform baseline methods by 2.69%-7.36%. The codes and the dataset are released at https://github.com/Sweetnow/group-buying-recommendation.
机译:小组购买,作为新兴的社会电子商务网站购买形式,如Pinduoduo 1 ,最近取得了巨大的成功。在这个新的商业模式中,用户,发起者,可以推出一组和分享产品到他们的社交网络,当有足够的朋友,参与者,加入它,这笔交易是啮合的。组建社交电子商务的建议,其中推荐一个项目清单当用户想要启动一组时,在团体成功率和销售中起着重要作用。然而,为组购买的个性化推荐模式设计是一个很少探索的全新问题。在这项工作中,我们采取了第一步,探讨了社会电子商务群体购买建议的问题,并开发了GBGCN方法(缩写了组购买图形卷积网络)。考虑到有多种类型的行为(启动和加入)和结构化的社交网络数据,我们首先建议构建指示的异构图表来代表行为数据和社交网络。然后,我们开发一个具有多视图嵌入传播的图形卷积网络模型,可以提取复杂的大阶图形结构来学习嵌入品。最后,由于失败的群组购买暗示了发起者和参与者的丰富偏好,我们设计了一个双对损耗功能来蒸馏这种偏好信号。我们收集了一系列的群体购买和进行实验,以评估性能。经验结果表明,我们提出的GBGCN可以显着优于基线方法2.69%-7.36%。代码和数据集在https://github.com/sweetnow/group-buying-recommencation释放。

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