Fitting trees to $\ell_1$-hyperbolic distances

Joon-Hyeok Yim, Anna C. Gilbert
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Abstract

Building trees to represent or to fit distances is a critical component of phylogenetic analysis, metric embeddings, approximation algorithms, geometric graph neural nets, and the analysis of hierarchical data. Much of the previous algorithmic work, however, has focused on generic metric spaces (i.e., those with no a priori constraints). Leveraging several ideas from the mathematical analysis of hyperbolic geometry and geometric group theory, we study the tree fitting problem as finding the relation between the hyperbolicity (ultrametricity) vector and the error of tree (ultrametric) embedding. That is, we define a vector of hyperbolicity (ultrametric) values over all triples of points and compare the $\ell_p$ norms of this vector with the $\ell_q$ norm of the distortion of the best tree fit to the distances. This formulation allows us to define the average hyperbolicity (ultrametricity) in terms of a normalized $\ell_1$ norm of the hyperbolicity vector. Furthermore, we can interpret the classical tree fitting result of Gromov as a $p = q = \infty$ result. We present an algorithm HCCRootedTreeFit such that the $\ell_1$ error of the output embedding is analytically bounded in terms of the $\ell_1$ norm of the hyperbolicity vector (i.e., $p = q = 1$) and that this result is tight. Furthermore, this algorithm has significantly different theoretical and empirical performance as compared to Gromov's result and related algorithms. Finally, we show using HCCRootedTreeFit and related tree fitting algorithms, that supposedly standard data sets for hierarchical data analysis and geometric graph neural networks have radically different tree fits than those of synthetic, truly tree-like data sets, suggesting that a much more refined analysis of these standard data sets is called for.
拟合树与 $\ell_1$-hyperbolic 距离
建树来表示或拟合距离是系统发育分析、度量嵌入、逼近算法、几何图神经网和层次数据分析的重要组成部分。然而,以前的算法工作大多集中在通用度量空间(即没有先验约束的空间)。利用双曲几何学和几何群论数学分析中的一些思想,我们将树拟合问题研究为寻找双曲性(超度量)向量与树(超度量)嵌入误差之间的关系。也就是说,我们在所有点的三元组上定义一个双曲性(超度量)值向量,并比较该向量的 $\ell_p$ 准则与距离拟合最佳树的失真度的 $\ell_q$ 准则。通过这种方法,我们可以用双曲向量的规范化 $\ell_1$ 来定义平均双曲性(超对称性)。此外,我们还可以将格罗莫夫的经典树拟合结果解释为 $p = q = \infty$结果。我们提出了一种算法 HCCRootedTreeFit,使得输出嵌入的 $\ell_1$ 误差在双曲向量的 $\ell_1$ 准则上是有解析约束的(即: $p = q = 1$)、最后,我们使用 HCCRootedTreeFit 和相关的树拟合算法表明,用于层次数据分析和几何图神经网络的所谓标准数据集的树拟合与那些合成的、真正树状的数据集的树拟合截然不同,这表明需要对这些标准数据集进行更精细的分析。
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