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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Change Detection in Graph Streams by Learning Graph Embeddings on Constant-Curvature Manifolds
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Change Detection in Graph Streams by Learning Graph Embeddings on Constant-Curvature Manifolds

机译:通过在恒定曲率歧管上学习图形嵌入来改变图形流中的检测

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The space of graphs is often characterized by a nontrivial geometry, which complicates learning and inference in practical applications. A common approach is to use embedding techniques to represent graphs as points in a conventional Euclidean space, but non-Euclidean spaces have often been shown to be better suited for embedding graphs. Among these, constant-curvature Riemannian manifolds (CCMs) offer embedding spaces suitable for studying the statistical properties of a graph distribution, as they provide ways to easily compute metric geodesic distances. In this paper, we focus on the problem of detecting changes in stationarity in a stream of attributed graphs. To this end, we introduce a novel change detection framework based on neural networks and CCMs, which takes into account the non-Euclidean nature of graphs. Our contribution in this paper is twofold. First, via a novel approach based on adversarial learning, we compute graph embeddings by training an autoencoder to represent graphs on CCMs. Second, we introduce two novel change detection tests operating on CCMs. We perform experiments on synthetic data, as well as two real-world application scenarios: the detection of epileptic seizures using functional connectivity brain networks and the detection of hostility between two subjects, using human skeletal graphs. Results show that the proposed methods are able to detect even small changes in a graph-generating process, consistently outperforming approaches based on Euclidean embeddings.
机译:图形的空间通常是由非活动的几何形状,它在实际应用中复杂化学习和推理。一种常见的方法是使用嵌入技术来表示传统欧几里德空间中的点,但是通常被示出了非欧几里德空间更适合嵌入图。其中,恒定曲率的黎曼歧管(CCMS)提供适合于研究图形分布的统计特性的嵌入空间,因为它们提供了容易计算度量测距距离的方法。在本文中,我们专注于检测归因图流中的实质性变化的问题。为此,我们介绍了基于神经网络和CCM的新型变更检测框架,这考虑了图形的非欧几里德性质。我们本文的贡献是双重的。首先,通过基于对冲学习的新方法,通过培训AutoEncoder来表示CCM上的图形来计算图形嵌入。其次,我们介绍了在CCMS上运行的两种新型变更检测测试。我们对合成数据进行实验,以及两个现实世界应用场景:使用人体骨骼图,使用功能性连通性脑网络检测癫痫癫痫发作和检测两个受试者之间的敌意。结果表明,所提出的方法能够在图形生成过程中检测甚至的小变化,始终如一地基于欧几里德嵌入的方法。

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