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Standardized entity representation learning for smart suggestions

机译:标准化的实体表示学习,可提供明智的建议

摘要

In an example, a plurality of user profiles in a social networking service are accessed. A heterogeneous graph structure having a plurality of nodes connected by edges is generated, each node corresponding to a different entity in the social networking service, each edge representing a co-occurrence of entities represented by nodes on each side of the edge in at least one of the user profiles. Weights are calculated for each edge of the heterogeneous graph structure, the weights being based on co-occurrence counts reflecting a number of user profiles in the plurality of user profiles in which corresponding nodes co-occurred. The heterogeneous graph structure is embedded into a d-dimensional space. A machine-learned model is then used to calculate a similarity score between a first node and second node by computing distance between the first node and the second node in the d¬-dimensional space.
机译:在示例中,访问社交网络服务中的多个用户简档。生成具有通过边缘连接的多个节点的异构图结构,每个节点对应于社交网络服务中的不同实体,每个边缘表示在至少一个边缘的每一侧上由节点表示的实体的同时出现用户个人资料。为异构图结构的每个边缘计算权重,该权重是基于共现计数的,该共现计数反映了多个用户配置文件中共存在相应节点的多个用户配置文件。异构图结构嵌入到d维空间中。然后,通过计算三维空间中第一节点和第二节点之间的距离,使用机器学习的模型来计算第一节点和第二节点之间的相似性得分。

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