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CMG2Vec: A composite meta-graph based heterogeneous information network embedding approach

机译:CMG2VEC:基于复合元图的异构信息网络嵌入方法

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Heterogeneous information network embedding has been intensively studied in the past years. However, existing methods require users to manually assign meta-paths or meta-graphs in advance. Meanwhile, most of previous approaches only consider a single type of meta-path or meta-graph which is usually sparse and biased, and thus the node representations learned may be incomprehensive and inaccurate. To tackle these limitations, we proposed an extensible semantic description structure, called Composite Meta-Graph(CMG). By virtue of such a structure, users do not need to worry about selection of an appropriate meta-path or meta-graph. Rich semantic relations and rich structural contexts between nodes of different types and of different distances can be elaborated accurately according to CMG. Moreover, a CMG based heterogeneous information embedding framework, namely CMG2Vec, is also proposed. By expanding the auto-encoder into a heterogeneous network scenario, CMG2Vec can embed proximities between nodes of multiple orders learned from CMG into latent representations after a series of encoding-decoding non-linear mapping. During the fusing process, an attention mechanism is adopted to automatically learn weights of these latent vectors, which enables each final node representation to focus on proximity of the most informative order. Experimental results on three large-scale datasets demonstrate that our method outperforms existing state-of-the-art homogeneous and heterogeneous network embedding approaches in three network mining tasks in terms of node classification, node clustering, and node similarity search. (C) 2021 Elsevier B.V. All rights reserved.
机译:异构信息网络嵌入已被广泛研究,在过去几年。然而,现有方法需要用户手动分配元路径或元图形提前。同时,大多数以前的方法的只考虑单个类型的元路径或元图的通常是稀疏和施力,因此,得知可以是不全面并且不准确的节点表示。为了解决这些限制,我们提出了一个可扩展的语义描述结构,称为复合超常图(CMG)。通过这样的结构,用户无需担心适当的元路径或元图形的选择。不同类型的节点和之间的不同距离的丰富语义关系和丰富的结构上下文可以准确地根据CMG加以阐述。此外,基于CMG异构信息嵌入框架,即CMG2Vec,还提出。通过扩大自动编码器到异构网络的情况下,可以CMG2Vec经过一系列编码 - 解码非线性映射的嵌入多个订单CMG了解到成潜表示的节点之间的邻近性。在定影过程中,注意的机制被采用自动学习这些潜在向量,这使得每个最终节点表示把重点放在最有信息顺序的接近度的权重。三个大型数据集的实验结果表明,我国现有的国家的最先进的同构和异构网络嵌入方法优于在三个网络挖掘任务的方法在节点分类,节点群集和节点相似性搜索方面。 (c)2021 Elsevier B.v.保留所有权利。

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