论文标题

通过矢量跨产品的定向图表示

Directed Graph Representation through Vector Cross Product

论文作者

Madhavan, Ramanujam, Wadhwa, Mohit

论文摘要

图形嵌入方法将节点嵌入到低维矢量空间中的图中,同时保留图形拓扑以执行下游任务,例如链接预测,节点建议和群集。这些任务取决于相似性度量,例如余弦相似性和在本质上是对称的嵌入之间的欧几里得距离,因此对有向图没有好处。在每个节点上学习两个嵌入,源和目标,旨在保留节点之间的边缘方向,以保护节点之间的边缘方向。但是,这些方法没有明确考虑有向边的属性。为了了解节点之间的方向关系,我们提出了一种新的方法,该方法利用了矢量跨产品的非交换性能来学习固有的嵌入,这些嵌入固有地保留了节点之间边缘的方向。我们通过暹罗神经网络学习了节点嵌入,在该神经网络中将交叉产物操作纳入了网络体系结构。尽管在三维中定义了一对矢量之间的交叉产品,但该方法扩展以学习n维嵌入,同时保持非交通性属性。在我们在三个现实世界数据集上的经验实验中,我们观察到,即使是非常低维的嵌入也可以有效地保留方向性属性,同时在链接预测和节点建议任务上超过某些最新方法

Graph embedding methods embed the nodes in a graph in low dimensional vector space while preserving graph topology to carry out the downstream tasks such as link prediction, node recommendation and clustering. These tasks depend on a similarity measure such as cosine similarity and Euclidean distance between a pair of embeddings that are symmetric in nature and hence do not hold good for directed graphs. Recent work on directed graphs, HOPE, APP, and NERD, proposed to preserve the direction of edges among nodes by learning two embeddings, source and target, for every node. However, these methods do not take into account the properties of directed edges explicitly. To understand the directional relation among nodes, we propose a novel approach that takes advantage of the non commutative property of vector cross product to learn embeddings that inherently preserve the direction of edges among nodes. We learn the node embeddings through a Siamese neural network where the cross-product operation is incorporated into the network architecture. Although cross product between a pair of vectors is defined in three dimensional, the approach is extended to learn N dimensional embeddings while maintaining the non-commutative property. In our empirical experiments on three real-world datasets, we observed that even very low dimensional embeddings could effectively preserve the directional property while outperforming some of the state-of-the-art methods on link prediction and node recommendation tasks

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