Sequential fashion recommendation is of great significance in online fashion shopping, which accounts for an increasing portion of either fashion retailing or online e-commerce. The key to building an effective sequential fashion recommendation model lies in capturing two types of patterns: the personal fashion preference of users and the transitional relationships between adjacent items. The two types of patterns are usually related to user-item interaction and item-item transition modeling respectively. However, due to the large sets of users and items as well as the sparse historical interactions, it is difficult to train an effective and efficient sequential fashion recommendation model. To tackle these problems, we propose to leverage two types of global graph, i.e., the user-item interaction graph and item-item transition graph, to obtain enhanced user and item representations by incorporating higher-order connections over the graphs. In addition, we adopt the graph kernel of LightGCN for the information propagation in both graphs and propose a new design for item-item transition graph. Extensive experiments on two established sequential fashion recommendation datasets validate the effectiveness and efficiency of our approach.
翻译:在网上时装购物中,按顺序排列的建议非常重要,这占时装零售或在线电子商务中越来越多的部分。建立有效的按顺序排列建议模式的关键在于捕捉两种模式:用户个人时装偏好和相邻物品之间的过渡关系。两种模式通常分别与用户-项目互动和项目项目过渡模型有关。然而,由于用户和项目数量众多以及历史互动稀少,因此很难培训一个有效和高效的按顺序排列建议模式。为了解决这些问题,我们提议利用两种全球图表,即用户-项目互动图表和项目-项目过渡图表,通过在图表上安装更高级的顺序链接,获得更好的用户和项目表述。此外,我们采用LightGCN的图形内核,用于两个图表的信息传播,并提出项目按顺序排列的建议转换图的新设计。关于两个既定的按顺序排列建议数据集的广泛实验证实了我们的方法的有效性和效率。