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User Guided Entity Similarity Search Using Meta-Path Selection in Heterogeneous Information Networks

机译:异构信息网络中使用元路径选择的用户指导实体相似性搜索

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With the emergence of web-based social and information applications, entity similarity search in information networks, aiming to find entities with high similarity to a given query entity, has gained wide attention. However, due to the diverse semantic meanings in heterogeneous information networks, which contain multi-typed entities and relationships, similarity measurement can be ambiguous without context. In this paper, we investigate entity similarity search and the resulting ambiguity problems in heterogeneous information networks. We propose to use a meta-path-based ranking model ensemble to represent semantic meanings for similarity queries, exploit the possibility of using using user-guidance to understand users query. Experiments on real-world datasets show that our framework significantly outperforms competitor methods.
机译:随着基于Web的社交和信息应用程序的出现,信息网络中的实体相似性搜索旨在寻找与给定查询实体具有高度相似性的实体,受到了广泛的关注。但是,由于异构信息网络中包含多种类型的实体和关系的语义各不相同,因此在没有上下文的情况下,相似性度量可能会模棱两可。在本文中,我们研究了异构信息网络中的实体相似性搜索以及由此引起的歧义问题。我们建议使用基于元路径的排名模型集合来表示相似性查询的语义,利用使用用户指导来理解用户查询的可能性。对真实数据集的实验表明,我们的框架明显优于竞争对手的方法。

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