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Hydra: a method for strain-minimizing hyperbolic embedding of network- and distance-based data

机译:HYDRA:一种应变最小化基于网络和距离数据的双曲嵌入的方法

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We introduce hydra (hyperbolic distance recovery and approximation), a new method for embedding network- or distance-based data into hyperbolic space. We show mathematically that hydra satisfies a certain optimality guarantee: it minimizes the 'hyperbolic strain' between original and embedded data points. Moreover, it is able to recover points exactly, when they are contained in a low-dimensional hyperbolic subspace of the feature space. Testing on real network data we show that the embedding quality of hydra is competitive with existing hyperbolic embedding methods, but achieved at substantially shorter computation time. An extended method, termed hydra+, typically outperforms existing methods in both computation time and embedding quality.
机译:我们介绍了Hydra(双曲距离恢复和近似),一种用于将基于网络或距离的数据嵌入到双曲线空间中的新方法。我们在数学上展示了Hydra满足某种最优性保证:它最大限度地减少了原始和嵌入式数据点之间的“双曲应变”。此外,当它们包含在特征空间的低维双曲子空间中时,它能够完全恢复点。实际网络数据测试我们认为Hydra的嵌入质量与现有的双曲线嵌入方法具有竞争力,但在基本上更短的计算时间内实现。扩展方法称为Hydra +,通常优于计算时间和嵌入质量的现有方法。

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