Eran Halperin, Guy Kortsarz, et al.
SIAM Journal on Computing
We devise a new embedding technique, which we call measured descent, based on decomposing a metric space locally, at varying speeds, according to the density of some probability measure. This provides a refined and unified framework for the two primary methods of constructing Fréchet embeddings for finite metrics, due to J. Bourgain and S. Rao. We prove that any n-point metric space (X, d) embeds in Hilbert space with distortion O(√α X · log n), where α X is a geometric estimate on the decomposability of X. An an immediate corollary, we obtain an O(√log λ X · log n ) distortion embedding, where λ X is the doubling constant of X. Since λ X ≤ n, this result recovers Bourgain's theorem, but when the metric X is, in a sense, "low-dimensional," improved bounds are achieved. Our embeddings are volume-respecting for subsets of arbitrary size. One consequence is the existence of (k, O(logn)) volume-respecting embeddings for all 1 ≤ k ≤ n, which is the best possible, and answers positively a question posed by U. Feige. Our techniques are also used to answer positively a question of Y. Rabinovich, showing that any weighted n-point planar graph embeds in l ∞O(log n),with O(1) distortion. The O(log n) bound on the dimension is optimal, and improves upon the previously known bound of O(log 2 n). © 2004 IEEE.
Eran Halperin, Guy Kortsarz, et al.
SIAM Journal on Computing
Julia Chuzhoy, Sudipto Guha, et al.
Journal of the ACM
Parikshit Gopalan, T.S. Jayram, et al.
SODA 2007
Robert Krauthgamer, Aranyak Mehta, et al.
ICDE 2008