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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Efficient Ranking on Entity Graphswith Personalized Relationships
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Efficient Ranking on Entity Graphswith Personalized Relationships

机译:具有个性化关系的实体图的有效排序

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摘要

Authority flow techniques like PageRank and ObjectRank can provide personalized ranking of typed entity-relationship graphs. There are two main ways to personalize authority flow ranking: Node-based personalization, where authority originates from a set of user-specific nodes; edge-based personalization, where the importance of different edge types is user-specific. We propose the first approach to achieve efficient edge-based personalization using a combination of precomputation and runtime algorithms. In particular, we apply our method to ObjectRank, where a personalized weight assignment vector (WAV) assigns different weights to each edge type or relationship type. Our approach includes a repository of rankings for various WAVs. We consider the following two classes of approximation: (a) SchemaApprox is formulated as a distance minimization problem at the schema level; (b) DataApprox is a distance minimization problem at the data graph level. SchemaApprox is not robust since it does not distinguish between important and trivial edge types based on the edge distribution in the data graph. In contrast, DataApprox has a provable error bound. Both SchemaApprox and DataApprox are expensive so we develop efficient heuristic implementations, ScaleRank and PickOne respectively. Extensive experiments on the DBLP data graph show that ScaleRank provides a fast and accurate personalized authority flow ranking.
机译:诸如PageRank和ObjectRank之类的授权流技术可以提供类型化实体关系图的个性化排名。个性化权限流排名的主要方法有两种:基于节点的个性化,其中权限源自一组特定于用户的节点;基于边缘的个性化,其中不同边缘类型的重要性是特定于用户的。我们提出了使用预计算和运行时算法的组合来实现基于边缘的高效个性化的第一种方法。特别是,我们将方法应用于ObjectRank,其中个性化的权重分配向量(WAV)为每种边缘类型或关系类型分配不同的权重。我们的方法包括各种WAV排名的存储库。我们考虑以下两类近似值:(a)将SchemaApprox公式化为模式级别的距离最小化问题; (b)DataApprox是数据图级别的距离最小化问题。 SchemaApprox不够健壮,因为它无法根据数据图中的边缘分布来区分重要的边缘类型和琐碎的边缘类型。相反,DataApprox具有可证明的错误界限。 SchemaApprox和DataApprox都很昂贵,因此我们分别开发了有效的启发式实现ScaleRank和PickOne。在DBLP数据图上进行的大量实验表明,ScaleRank提供了快速而准确的个性化权限流排名。

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