Let G = (V,E) denote an undirected weighted graph of n nodes and m edges, and let U ⊆ V. The relative eccentricity of a node v ∈ U is the maximum distance in G between v and any other node of U, while the radius of U in G is the minimum relative eccentricity of all the nodes in U. Several facility location problems ask for partitioning the nodes of G so as to minimize some global optimization function of the radii of the subsets of the partition. Here, we focus on the problem of partitioning the nodes of G into exactly p ≥ 2 non-empty subsets, so as to minimize the sum of the subset radii, called the total radius of the partition. This problem can be easily seen to be NP-hard when p is part of the input, but when p is fixed it can be solved in polynomial time by reducing it to a similar partitioning problem. In this paper, we first present an efficient O(n 3) time algorithm for the notable case p = 2, which improves the O(mn 2 + n 3 logn) running time obtainable by applying the aforementioned reduction. Then, in an effort of characterizing meaningful polynomial-time solvable instances of the problem when p is part of the input, we show that (i) when G is a tree, then the problem can be solved in O(n 3 p 3) time, and (ii) when G has bounded treewidth h, then the problem can be solved in O(n 4h + 4 p 3) time.

Locating Facilities on a Network to Minimize Their Average Service Radius / Bilò, Davide; Derungs, Jörg; Gualà, Luciano; Proietti, Guido; Widmayer, Peter. - 4835:(2007), pp. 587-598. (Intervento presentato al convegno 18th International Symposium on Algorithms and Computation (ISAAC'07)) [10.1007/978-3-540-77120-3_51].

Locating Facilities on a Network to Minimize Their Average Service Radius

BILÒ, Davide;
2007-01-01

Abstract

Let G = (V,E) denote an undirected weighted graph of n nodes and m edges, and let U ⊆ V. The relative eccentricity of a node v ∈ U is the maximum distance in G between v and any other node of U, while the radius of U in G is the minimum relative eccentricity of all the nodes in U. Several facility location problems ask for partitioning the nodes of G so as to minimize some global optimization function of the radii of the subsets of the partition. Here, we focus on the problem of partitioning the nodes of G into exactly p ≥ 2 non-empty subsets, so as to minimize the sum of the subset radii, called the total radius of the partition. This problem can be easily seen to be NP-hard when p is part of the input, but when p is fixed it can be solved in polynomial time by reducing it to a similar partitioning problem. In this paper, we first present an efficient O(n 3) time algorithm for the notable case p = 2, which improves the O(mn 2 + n 3 logn) running time obtainable by applying the aforementioned reduction. Then, in an effort of characterizing meaningful polynomial-time solvable instances of the problem when p is part of the input, we show that (i) when G is a tree, then the problem can be solved in O(n 3 p 3) time, and (ii) when G has bounded treewidth h, then the problem can be solved in O(n 4h + 4 p 3) time.
2007
978-3-540-77118-0
Locating Facilities on a Network to Minimize Their Average Service Radius / Bilò, Davide; Derungs, Jörg; Gualà, Luciano; Proietti, Guido; Widmayer, Peter. - 4835:(2007), pp. 587-598. (Intervento presentato al convegno 18th International Symposium on Algorithms and Computation (ISAAC'07)) [10.1007/978-3-540-77120-3_51].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11388/52029
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