Metric Perturbation Resilience
read the original abstract
We study the notion of perturbation resilience introduced by Bilu and Linial (2010) and Awasthi, Blum, and Sheffet (2012). A clustering problem is $\alpha$-perturbation resilient if the optimal clustering does not change when we perturb all distances by a factor of at most $\alpha$. We consider a class of clustering problems with center-based objectives, which includes such problems as k-means, k-median, and k-center, and give an exact algorithm for clustering 2-perturbation resilient instances. Our result improves upon the result of Balcan and Liang (2016), who gave an algorithm for clustering $1+\sqrt{2}\approx 2.41$ perturbation resilient instances. Our result is tight in the sense that no polynomial-time algorithm can solve $(2-\varepsilon)$-perturbation resilient instances unless NP = RP, as was shown by Balcan, Haghtalab, and White (2016). We show that the algorithm works on instances satisfying a slightly weaker and more natural condition than perturbation resilience, which we call metric perturbation resilience.
This paper has not been read by Pith yet.
Forward citations
Cited by 1 Pith paper
-
Analysis of Ward's Method
Ward's method yields a 2-approximation for k-means under well-separated optima (recovering the optimum under balance) in any dimension, with Ω((3/2)^d) lower bounds without separation and O(1) in 1D.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.