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SODA
2010
ACM

Sharp kernel clustering algorithms and their associated Grothendieck inequalities

14 years 10 months ago
Sharp kernel clustering algorithms and their associated Grothendieck inequalities
abstract Subhash Khot Assaf Naor In the kernel clustering problem we are given a (large) n ? n symmetric positive semidefinite matrix A = (aij) with n i=1 n j=1 aij = 0 and a (small) k ? k symmetric positive semidefinite matrix B = (bij). The goal is to find a partition {S1, . . . , Sk} of {1, . . . n} which maximizes k i=1 k j=1 (p,q)Si?Sj apq bij. We design a polynomial time approximation algorithm that achieves an approximation ratio of R(B)2 C(B) , where R(B) and C(B) are geometric parameters that depend only on the matrix B, defined as follows: if bij = vi, vj is the Gram matrix representation of B for some v1, . . . , vk Rk then R(B) is the minimum radius of a Euclidean ball containing the points {v1, . . . , vk}. The parameter C(B) is defined as the maximum over all measurable partitions {A1, . . . , Ak} of Rk-1 of the quantity k i=1 k j=1 bij zi, zj , where for i {1, . . . , k} the vector zi Rk-1 is the Gaussian moment of Ai, i.e., zi = 1 (2)(k-1)/2 Ai xe- x 2 2/2 dx. We al...
Subhash Khot, Assaf Naor
Added 01 Mar 2010
Updated 02 Mar 2010
Type Conference
Year 2010
Where SODA
Authors Subhash Khot, Assaf Naor
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