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Universal Multi-Dimensional Scaling

机译:通用多维缩放

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摘要

In this paper, we propose a unified algorithmic framework for solving many known variants of MDS. Our algorithm is a simple iterative scheme with guaranteed convergence, and is modular, by changing the internals of a single subroutine in the algorithm, we can switch cost functions and target spaces easily. In addition to the formal guarantees of convergence, our algorithms are accurate; in most cases, they converge to better quality solutions than existing methods in comparable time. Moreover, they have a small memory footprint and scale effectively for large data sets. We expect that this framework will be useful for a number of MDS variants that have not yet been studied.Our framework extends to embedding high-dimensional points lying on a sphere to points on a lower dimensional sphere, preserving geodesic distances. As a complement to this result, we also extend the Johnson-Lindenstrauss Lemma to this spherical setting, by showing that projecting to a random O((1/ε2)logn)-dimensional sphere causes only an e-distortion in the geodesic distances.
机译:在本文中,我们提出了一个统一的算法框架,用于解决MDS的许多已知变体。我们的算法是具有保证收敛性的简单迭代方案,并且是模块化的,通过更改算法中单个子例程的内部,我们可以轻松切换成本函数和目标空间。除了形式上的收敛保证外,我们的算法也很准确;在大多数情况下,它们可以在可比的时间内收敛到比现有方法更好的质量解决方案。此外,它们的内存占用量小,可以有效地扩展用于大型数据集。我们希望该框架将对许多尚未研究的MDS变体有用。 我们的框架扩展到将球体上的高维点嵌入到低维球体上的点,从而保留了测地距离。作为此结果的补充,我们还通过显示投影到随机O((1 /ε2)logn)维球体,仅导致测地线距离发生电子扭曲,将Johnson-Lindenstrauss引理扩展到此球面设置。

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