Facility Location - Minisum Facility Location

Minisum Facility Location

A simple facility location problem is the Fermat-Weber problem, in which a single facility is to be placed, with the only optimization criterion being the minimization of the sum of distances from a given set of point sites. More complex problems considered in this discipline include the placement of multiple facilities, constraints on the locations of facilities, and more complex optimization criteria.

In a basic formulation, the Facility Location problem consists of a set of potential facility sites L where a facility can be opened, and a set of demand points D that must be serviced. The goal is to pick a subset F of facilities to open, to minimize the sum of distances from each demand point to its nearest facility, plus the sum of opening costs of the facilities.

The Facility Location problem on general graphs is NP-hard to solve optimally, by reduction from (for example) the Set Cover problem. A number of approximation algorithms have been developed for the facility location (FP) problem and many of its variants.

Without assumptions on the set of distances between clients and sites (in particular, without assuming that the distances satisfy the triangle inequality), the problem is known as Non-Metric Facility Location and is approximable within a factor O(log(n)). This factor is tight, via an approximation-preserving reduction from the Set Cover problem.

If we assume distances between clients and sites are undirected and satisfy the triangle inequality, we are talking about a Metric Facility Location problem (MFL). The MFL is still NP-hard and hard to approximate within factor better than 1.46. The currently best known approximation algorithm achieves approximation ratio of 1.488.

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Famous quotes containing the word facility:

    The three great ends which a statesman ought to propose to himself in the government of a nation, are,—1. Security to possessors; 2. Facility to acquirers; and, 3. Hope to all.
    Samuel Taylor Coleridge (1772–1834)