Strain-Minimizing Hyperbolic Network Embeddings with Landmarks

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2022-07-14 DOI:10.48550/arXiv.2207.06775
Martin Keller-Ressel, Stephanie Nargang
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Abstract

We introduce L-hydra (landmarked hyperbolic distance recovery and approximation), a method for embedding network- or distance-based data into hyperbolic space, which requires only the distance measurements to a few ‘landmark nodes’. This landmark heuristic makes L-hydra applicable to large-scale graphs and improves upon previously introduced methods. As a mathematical justification, we show that a point configuration in $d$-dimensional hyperbolic space can be perfectly recovered (up to isometry) from distance measurements to just $d+1$ landmarks. We also show that L-hydra solves a two-stage strain-minimization problem, similar to our previous (unlandmarked) method ‘hydra’. Testing on real network data, we show that L-hydra is an order of magnitude faster than the existing hyperbolic embedding methods and scales linearly in the number of nodes. While the embedding error of L-hydra is higher than the error of the existing methods, we introduce an extension, L-hydra+, which outperforms the existing methods in both runtime and embedding quality.
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带地标的应变最小化双曲网络嵌入
我们介绍了L-hydra(地标双曲距离恢复和近似),这是一种将基于网络或距离的数据嵌入到双曲空间的方法,它只需要到几个“地标节点”的距离测量。这种具有里程碑意义的启发式方法使L-hydra适用于大规模图,并改进了以前介绍的方法。作为数学证明,我们证明了d维双曲空间中的点构型可以从距离测量完全恢复(直到等距)到仅d+1个地标。我们还表明,L-hydra解决了一个两阶段的应变最小化问题,类似于我们之前的(未标记的)方法' hydra '。在实际网络数据上的测试表明,L-hydra比现有的双曲嵌入方法快一个数量级,并且在节点数量上呈线性扩展。虽然L-hydra的嵌入误差高于现有方法,但我们引入了一个扩展,L-hydra+,在运行时间和嵌入质量上都优于现有方法。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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