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| artículo
Approximate max-min resource sharing for structured concave optimization
Fecha
2001Registro en:
10.1137/S1052623499358689
1095-7189
1052-6234
WOS:000169069900013
Autor
Grigoriadis, MD
Khachiyan, LG
Porkolab, L
Villavicencio, J
Institución
Resumen
We present a Lagrangian decomposition algorithm which uses logarithmic potential reduction to compute an epsilon -approximate solution of the general max-min resource sharing problem with M nonnegative concave constraints on a convex set B. We show that this algorithm runs in O(M (epsilon (-2) + In M)) iterations, a data independent bound which is optimal up to polylogarithmic factors for any fixed relative accuracy epsilon is an element of (0,1). In the block-angular case, B is the product of K convex sets ( blocks) and each constraint function is block separable. For such models, an iteration of our method requires a Theta (epsilon) approximate solution of K independent block maximization problems which can be computed in parallel.