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SODA
2010
ACM

Sharp kernel clustering algorithms and their associated Grothendieck inequalities

14 years 9 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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