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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Neighborhood Growth Determines Geometric Priors for Relational Representation Learning
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Neighborhood Growth Determines Geometric Priors for Relational Representation Learning

机译:邻域成长决定了关系代表学习的几何前沿

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The problem of identifying geometric structure in heterogeneous, high-dimensional data is a cornerstone of representation learning. While there exists a large body of literature on the embeddability of canonical graphs, such as lattices or trees, the heterogeneity of the relational data typically encountered in practice limits the applicability of these classical methods. In this paper, we propose a combinatorial approach to evaluating embeddability, i.e., to decide whether a data set is best represented in Euclidean, Hyperbolic or Spherical space. Our method analyzes nearest-neighbor structures and local neighborhood growth rates to identify the geometric priors of suitable embedding spaces. For canonical graphs, the algorithm’s prediction provably matches classical results. As for large, heterogeneous graphs, we introduce an efficiently computable statistic that approximates the algorithm’s decision rule. We validate our method over a range of benchmark data sets and compare with recently published optimization-based embeddability methods.
机译:识别异构,高维数据中几何结构的问题是表示学习的基石。虽然在规范图的嵌入性上存在大量的文献,例如格子或树木,但在实践中通常遇到的关系数据的异质性限制了这些古典方法的适用性。在本文中,我们提出了评估嵌入性的组合方法,即确定数据集是否最能在欧几里德,双曲线或球形空间中代表。我们的方法分析了最近的邻居结构和本地邻域生长速率,以识别合适的嵌入空间的几何前沿。对于规范图形,算法的预测可从而匹配古典结果。至于大,异构图,我们介绍了一个有效的可计算统计统计,近似于算法的决策规则。我们在一系列基准数据集中验证了我们的方法,并与最近发布的基于优化的嵌入性方法进行比较。

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