Understanding latent user needs beneath shopping behaviors is critical to e-commercial applications. Without a proper definition of user needs in e-commerce, most industry solutions are not driven directly by user needs at current stage, which prevents them from further improving user satisfaction. Representing implicit user needs explicitly as nodes like "outdoor barbecue" or "keep warm for kids" in a knowledge graph, provides new imagination for various e- commerce applications. Backed by such an e-commerce knowledge graph, we propose a supervised learning algorithm to conceptualize user needs from their transaction history as "concept" nodes in the graph and infer those concepts for each user through a deep attentive model. Offline experiments demonstrate the effectiveness and stability of our model, and online industry strength tests show substantial advantages of such user needs understanding.
翻译:了解购物行为下的潜在用户需求对于电子商业应用至关重要。如果对电子商务中的用户需求没有适当的定义,大多数行业解决方案在现阶段并非直接由用户需求驱动,这使它们无法进一步提高用户的满意度。在知识图中,隐含用户需求明确作为“户外烧烤”或“让孩子保持温暖”等节点,为各种电子商务应用提供了新的想象力。在这种电子商务知识图的支持下,我们提出一种受监督的学习算法,将用户需求从其交易史中概念化为图表中的“概念”节点,并通过深思熟虑的模式为每个用户推导出这些概念。 离岸实验显示了我们模型的有效性和稳定性,在线行业实力测试显示了这种用户需要理解的巨大优势。