邻接谱嵌入算法研究进展

Marcelo Fiori, Bernardo Marenco, Federico Larroca, P. Bermolen, G. Mateos
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引用次数: 3

摘要

随机点积图(RDPG)是一种流行的关系数据生成图模型。RDPGs假设每个节点存在潜在位置,并通过相应潜在向量的内积指定边缘形成概率。从观察到的图中估计这些潜在位置的嵌入任务通常被视为一个非凸矩阵分解问题。主要的邻接谱嵌入提供了通过邻接矩阵的特征分解获得的近似解,它具有可靠的统计保证,但计算量大,并且是正式解决代理问题。在本文中,我们介绍了最近的非凸优化进展,并证明了它们对RDPG推理的影响。我们开发了一阶梯度下降方法来更好地解决原始优化问题,并以有机的方式适应更广泛的网络嵌入应用。所得到的图表示学习框架的有效性在合成数据和实际数据上都得到了验证。我们展示了算法具有可扩展性,对缺失的网络数据具有鲁棒性,并且当以流方式获取图形时,可以随着时间的推移跟踪潜在位置。
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Algorithmic Advances for the Adjacency Spectral Embedding
The Random Dot Product Graph (RDPG) is a popular generative graph model for relational data. RDPGs postulate there exist latent positions for each node, and specifies the edge formation probabilities via the inner product of the corresponding latent vectors. The embedding task of estimating these latent positions from observed graphs is usually posed as a non-convex matrix factorization problem. The workhorse Adjacency Spectral Embedding offers an approximate solution obtained via the eigendecomposition of the adjacency matrix, which enjoys solid statistical guarantees but can be computationally intensive and is formally solving a surrogate problem. In this paper, we bring to bear recent non-convex optimization advances and demonstrate their impact to RDPG inference. We develop first-order gradient descent methods to better solve the original optimization problem, and to accommodate broader network embedding applications in an organic way. The effectiveness of the resulting graph representation learning framework is demonstrated on both synthetic and real data. We show the algorithms are scalable, robust to missing network data, and can track the latent positions over time when the graphs are acquired in a streaming fashion.
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