Inductive Meta-path Learning for Schema-complex Heterogeneous Information Networks.

Shixuan Liu, Changjun Fan, Kewei Cheng, Yunfei Wang, Peng Cui, Yizhou Sun, Zhong Liu
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Abstract

Heterogeneous Information Networks (HINs) are information networks with multiple types of nodes and edges. The concept of meta-path, i.e., a sequence of entity types and relation types connecting two entities, is proposed to provide the meta-level explainable semantics for various HIN tasks. Traditionally, meta-paths are primarily used for schema-simple HINs, e.g., bibliographic networks with only a few entity types, where meta-paths are often enumerated with domain knowledge. However, the adoption of meta-paths for schema-complex HINs, such as knowledge bases (KBs) with hundreds of entity and relation types, has been limited due to the computational complexity associated with meta-path enumeration. Additionally, effectively assessing meta-paths requires enumerating relevant path instances, which adds further complexity to the meta-path learning process. To address these challenges, we propose SchemaWalk, an inductive meta-path learning framework for schema-complex HINs. We represent meta-paths with schema-level representations to support the learning of the scores of meta-paths for varying relations, mitigating the need of exhaustive path instance enumeration for each relation. Further, we design a reinforcement-learning based path-finding agent, which directly navigates the network schema (i.e., schema graph) to learn policies for establishing meta-paths with high coverage and confidence for multiple relations. Extensive experiments on real data sets demonstrate the effectiveness of our proposed paradigm.

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针对模式复杂的异构信息网络的归纳元路径学习。
异构信息网络(HIN)是具有多种类型节点和边的信息网络。元路径的概念,即连接两个实体的实体类型和关系类型序列,被提出来为各种 HIN 任务提供元级可解释语义。传统上,元路径主要用于模式简单的 HIN,如只有少数实体类型的书目网络,在这种网络中,元路径通常是用领域知识枚举出来的。然而,由于元路径枚举的计算复杂性,元路径在模式复杂的 HIN(如具有数百种实体和关系类型的知识库 (KB))中的应用受到了限制。此外,有效评估元路径需要枚举相关路径实例,这进一步增加了元路径学习过程的复杂性。为了应对这些挑战,我们提出了 SchemaWalk,这是一个针对模式复杂的 HIN 的归纳式元路径学习框架。我们用模式级表征来表示元路径,以支持对不同关系的元路径得分的学习,从而减少了对每种关系进行详尽路径实例枚举的需要。此外,我们还设计了一个基于强化学习的寻路代理,它可以直接浏览网络模式(即模式图),学习为多种关系建立高覆盖率和高置信度元路径的策略。在真实数据集上进行的大量实验证明了我们提出的模式的有效性。
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