PieClam:基于重叠包容和排斥社区的通用图自动编码器

Daniel Zilberg, Ron Levie
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引用次数: 0

摘要

我们提出了 PieClam(Prior Inclusive Exclusive Cluster Affiliation Model):一种将任何图形表示为重叠广义群体的概率图模型。我们的方法可以解释为图自动编码器:在给定输入图的情况下,通过最大化解码图的对数似然的算法将节点嵌入代码空间。PieClam 是一种社区隶属度模型,它在两个主要方面对 BigClam 等著名方法进行了扩展。首先,解码器不是通过代码空间中节点之间的成对交互来定义的,我们还加入了代码空间中节点分布的先验学习,从而将我们的方法转化为图生成模型。其次,我们对社群的概念进行了概括,不仅允许具有强连接性的节点集(我们称之为包容性社群)存在,还允许具有强断开性的节点集存在(我们称之为排斥性社群)。为了给这两类社群建模,我们提出了一种基于洛伦兹内积的新型解码器,事实证明它比基于标准内积或规范差的标准解码器更具表现力。通过引入一种新的图相似性度量(我们称之为 logcut 距离),我们证明了 PieClam 是一种通用的自动编码器,能够统一地近似重构任何图。在图异常检测基准测试中,我们的方法获得了极具竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PieClam: A Universal Graph Autoencoder Based on Overlapping Inclusive and Exclusive Communities
We propose PieClam (Prior Inclusive Exclusive Cluster Affiliation Model): a probabilistic graph model for representing any graph as overlapping generalized communities. Our method can be interpreted as a graph autoencoder: nodes are embedded into a code space by an algorithm that maximizes the log-likelihood of the decoded graph, given the input graph. PieClam is a community affiliation model that extends well-known methods like BigClam in two main manners. First, instead of the decoder being defined via pairwise interactions between the nodes in the code space, we also incorporate a learned prior on the distribution of nodes in the code space, turning our method into a graph generative model. Secondly, we generalize the notion of communities by allowing not only sets of nodes with strong connectivity, which we call inclusive communities, but also sets of nodes with strong disconnection, which we call exclusive communities. To model both types of communities, we propose a new type of decoder based the Lorentz inner product, which we prove to be much more expressive than standard decoders based on standard inner products or norm distances. By introducing a new graph similarity measure, that we call the log cut distance, we show that PieClam is a universal autoencoder, able to uniformly approximately reconstruct any graph. Our method is shown to obtain competitive performance in graph anomaly detection benchmarks.
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