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1.
Suppose G is a graph. Two edges e and e′ in G are said to be adjacent if they share a common end vertex, and distance two apart if they are nonadjacent but both are adjacent to a common edge. Let j and k be two positive integers. An L(j,k)-edge-labeling of a graph G is an assignment of nonnegative integers, called labels, to the edges of G such that the difference between labels of any two adjacent edges is at least j, and the difference between labels of any two edges that are distance two apart is at least k. The minimum range of labels over all L(j,k)-edge-labelings of a graph G is called the L(j,k)-edge-labeling number of G, denoted by $\lambda_{j,k}'(G)$ . Let m, j and k be positive integers. An m-circular-L(j,k)-edge-labeling of a graph G is an assignment f from {0,1,…,m?1} to the edges of G such that, for any two edges e and e′, |f(e)?f(e′)| m j if e and e′ are adjacent, and |f(e)?f(e′)| m k if e and e′ are distance two apart, where |a| m =min{a,m?a}. The minimum m such that G has an m-circular-L(j,k)-edge-labeling is called the circular-L(j,k)-edge-labeling number of G, denoted by $\sigma_{j,k}'(G)$ . This paper investigates the L(1,1)-edge-labeling numbers, the L(2,1)-edge-labeling numbers and the circular-L(2,1)-edge-labeling numbers of the hexagonal lattice, the square lattice, the triangular lattice and the strong product of two infinite paths.  相似文献   

2.
Finding the anti-block vital edge of a shortest path between two nodes   总被引:1,自引:1,他引:0  
Let P G (s,t) denote a shortest path between two nodes s and t in an undirected graph G with nonnegative edge weights. A detour at a node uP G (s,t)=(s,…,u,v,…,t) is defined as a shortest path P Ge (u,t) from u to t which does not make use of (u,v). In this paper, we focus on the problem of finding an edge e=(u,v)∈P G (s,t) whose removal produces a detour at node u such that the ratio of the length of P Ge (u,t) to the length of P G (u,t) is maximum. We define such an edge as an anti-block vital edge (AVE for short), and show that this problem can be solved in O(mn) time, where n and m denote the number of nodes and edges in the graph, respectively. Some applications of the AVE for two special traffic networks are shown. This research is supported by NSF of China under Grants 70471035, 70525004, 701210001 and 60736027, and PSF of China under Grant 20060401003.  相似文献   

3.
Let j and k be two positive integers with jk. An L(j,k)-labelling of a graph G is an assignment of nonnegative integers to the vertices of G such that the difference between labels of any two adjacent vertices is at least j, and the difference between labels of any two vertices that are at distance two apart is at least k. The minimum range of labels over all L(j,k)-labellings of a graph G is called the λ j,k -number of G, denoted by λ j,k (G). A σ(j,k)-circular labelling with span m of a graph G is a function f:V(G)→{0,1,…,m−1} such that |f(u)−f(v)| m j if u and v are adjacent; and |f(u)−f(v)| m k if u and v are at distance two apart, where |x| m =min {|x|,m−|x|}. The minimum m such that there exists a σ(j,k)-circular labelling with span m for G is called the σ j,k -number of G and denoted by σ j,k (G). The λ j,k -numbers of Cartesian products of two complete graphs were determined by Georges, Mauro and Stein ((2000) SIAM J Discret Math 14:28–35). This paper determines the λ j,k -numbers of direct products of two complete graphs and the σ j,k -numbers of direct products and Cartesian products of two complete graphs. Dedicated to Professor Frank K. Hwang on the occasion of his 65th birthday. This work is partially supported by FRG, Hong Kong Baptist University, Hong Kong; NSFC, China, grant 10171013; and Southeast University Science Foundation grant XJ0607230.  相似文献   

4.
In the connected facility location (ConFL) problem, we are given a graph G=(V,E) with nonnegative edge cost c e on the edges, a set of facilities ??V, a set of demands (i.e., clients) $\mathcal{D}\subseteq VIn the connected facility location (ConFL) problem, we are given a graph G=(V,E) with nonnegative edge cost c e on the edges, a set of facilities ℱ⊆V, a set of demands (i.e., clients) D í V\mathcal{D}\subseteq V , and a parameter M≥1. Each facility i has a nonnegative opening cost f i and each client j has d j units of demand. Our objective is to open some facilities, say F⊆ℱ, assign each demand j to some open facility i(j)∈F and connect all open facilities using a Steiner tree T such that the total cost, which is ?i ? Ffi+?j ? Ddjci(j)j+M?e ? Tce\sum_{i\in F}f_{i}+\sum_{j\in \mathcal{D}}d_{j}c_{i(j)j}+M\sum_{e\in T}c_{e} , is minimized. We present a primal-dual 6.55-approximation algorithm for the ConFL problem which improves the previous primal-dual 8.55-approximation algorithm given by Swamy and Kumar (Algorithmica 40:245–269, 2004).  相似文献   

5.
Finding an anti-risk path between two nodes in undirected graphs   总被引:1,自引:0,他引:1  
Given a weighted graph G=(V,E) with a source s and a destination t, a traveler has to go from s to t. However, some of the edges may be blocked at certain times, and the traveler only observes that upon reaching an adjacent site of the blocked edge. Let ℘={P G (s,t)} be the set of all paths from s to t. The risk of a path is defined as the longest travel under the assumption that any edge of the path may be blocked. The paper will propose the Anti-risk Path Problem of finding a path P G (s,t) in ℘ such that it has minimum risk. We will show that this problem can be solved in O(mn+n 2log n) time suppose that at most one edge may be blocked, where n and m denote the number of vertices and edges in G, respectively. This research is supported by NSF of China under Grants 70525004, 60736027, 70121001 and Postdoctoral Science Foundation of China under Grant 20060401003.  相似文献   

6.
Let j, k and m be positive numbers, a circular m-L(j,k)-labeling of a graph G is a function f:V(G)→[0,m) such that |f(u)?f(v)| m j if u and v are adjacent, and |f(u)?f(v)| m k if u and v are at distance two, where |a?b| m =min{|a?b|,m?|a?b|}. The minimum m such that there exist a circular m-L(j,k)-labeling of G is called the circular L(j,k)-labeling number of G and is denoted by σ j,k (G). In this paper, for any two positive numbers j and k with jk, we give some results about the circular L(j,k)-labeling number of direct product of path and cycle.  相似文献   

7.
A graph class is sandwich monotone if, for every pair of its graphs G 1=(V,E 1) and G 2=(V,E 2) with E 1E 2, there is an ordering e 1,…,e k of the edges in E 2E 1 such that G=(V,E 1∪{e 1,…,e i }) belongs to the class for every i between 1 and k. In this paper we show that strongly chordal graphs and chordal bipartite graphs are sandwich monotone, answering an open question by Bakonyi and Bono (Czechoslov. Math. J. 46:577–583, 1997). So far, very few classes have been proved to be sandwich monotone, and the most famous of these are chordal graphs. Sandwich monotonicity of a graph class implies that minimal completions of arbitrary graphs into that class can be recognized and computed in polynomial time. For minimal completions into strongly chordal or chordal bipartite graphs no polynomial-time algorithm has been known. With our results such algorithms follow for both classes. In addition, from our results it follows that all strongly chordal graphs and all chordal bipartite graphs with edge constraints can be listed efficiently.  相似文献   

8.
Motivated by a security problem in geographic information systems, we study the following graph theoretical problem: given a graph G, two special nodes s and t in G, and a number k, find k paths from s to t in G so as to minimize the number of edges shared among the paths. This is a generalization of the well-known disjoint paths problem. While disjoint paths can be computed efficiently, we show that finding paths with minimum shared edges is NP-hard. Moreover, we show that it is even hard to approximate the minimum number of shared edges within a factor of $2^{\log^{1-\varepsilon}n}$ , for any constant ε>0. On the positive side, we show that there exists a (k?1)-approximation algorithm for the problem, using an adaption of a network flow algorithm. We design some heuristics to improve the quality of the output, and provide empirical results.  相似文献   

9.
Let G be a finite undirected bipartite graph. Let u, v be two vertices of G from different partite sets. A collection of k internal vertex disjoint paths joining u to v is referred as a k-container C k (u,v). A k-container is a k *-container if it spans all vertices of G. We define G to be a k *-laceable graph if there is a k *-container joining any two vertices from different partite sets. A k *-container C k *(u,v)={P 1,…,P k } is equitable if ||V(P i )|−|V(P j )||≤2 for all 1≤i,jk. A graph is equitably k *-laceable if there is an equitable k *-container joining any two vertices in different partite sets. Let Q n be the n-dimensional hypercube. In this paper, we prove that the hypercube Q n is equitably k *-laceable for all kn−4 and n≥5. Dedicated to Professor Frank K. Hwang on the occasion of his 65th birthday. The work of H.-M. Huang was supported in part by the National Science Council of the Republic of China under NSC94-2115-M008-013.  相似文献   

10.
We are given a digraph D=(V,A;w), a length (delay) function w:AR +, a positive integer d and a set $\mathcal{P}=\{(s_{i},t_{i};B_{i}) | i=1,2,\ldots,k\}$ of k requests, where s i V is called as the ith source node, t i V is called the ith sink node and B i is called as the ith length constraint. For a given positive integer d, the subdivision-constrained routing requests problem (SCRR, for short) is to find a directed subgraph D′=(V′,A′) of D, satisfying the two constraints: (1) Each request (s i ,t i ;B i ) has a path P i from s i to t i in D′ with length $w(P_{i})=\sum_{e\in P_{i}} w(e)$ no more than B i ; (2) Insert some nodes uniformly on each arc eA′ to ensure that each new arc has length no more than d. The objective is to minimize the total number of the nodes inserted on the arcs in A′. We obtain the following three main results: (1) The SCRR problem is at least as hard as the set cover problem even if each request has the same source s, i.e., s i =s for each i=1,2,…,k; (2) For each request (s,t;B), we design a dynamic programming algorithm to find a path from s to t with length no more than B such that the number of the nodes inserted on such a path is minimized, and as a corollary, we present a k-approximation algorithm to solve the SCRR problem for any k requests; (3) We finally present an optimal algorithm for the case where $\mathcal{P}$ contains all possible requests (s i ,t i ) in V×V and B i is equal to the length of the shortest path in D from s i to t i . To the best of our knowledge, this is the first time that the dynamic programming algorithm within polynomial time in (2) is designed for a weighted optimization problem while previous optimal algorithms run in pseudo-polynomial time.  相似文献   

11.
This paper studies the group testing problem in graphs as follows. Given a graph G=(V,E), determine the minimum number t(G) such that t(G) tests are sufficient to identify an unknown edge e with each test specifies a subset XV and answers whether the unknown edge e is in G[X] or not. Damaschke proved that ⌈log 2 e(G)⌉≤t(G)≤⌈log 2 e(G)⌉+1 for any graph G, where e(G) is the number of edges of G. While there are infinitely many complete graphs that attain the upper bound, it was conjectured by Chang and Hwang that the lower bound is attained by all bipartite graphs. Later, they proved that the conjecture is true for complete bipartite graphs. Chang and Juan verified the conjecture for bipartite graphs G with e(G)≤24 or for k≥5. This paper proves the conjecture for bipartite graphs G with e(G)≤25 or for k≥6. Dedicated to Professor Frank K. Hwang on the occasion of his 65th birthday. J.S.-t.J. is supported in part by the National Science Council under grant NSC89-2218-E-260-013. G.J.C. is supported in part by the National Science Council under grant NSC93-2213-E002-28. Taida Institute for Mathematical Sciences, National Taiwan University, Taipei 10617, Taiwan. National Center for Theoretical Sciences, Taipei Office.  相似文献   

12.
Let G be a nontrivial connected graph of order n and let k be an integer with 2??k??n. For a set S of k vertices of G, let ??(S) denote the maximum number ? of edge-disjoint trees T 1,T 2,??,T ? in G such that V(T i )??V(T j )=S for every pair i,j of distinct integers with 1??i,j???. Chartrand et al. generalized the concept of connectivity as follows: The k-connectivity, denoted by ?? k (G), of G is defined by ?? k (G)=min{??(S)}, where the minimum is taken over all k-subsets S of V(G). Thus ?? 2(G)=??(G), where ??(G) is the connectivity of G, for which there are polynomial-time algorithms to solve it. This paper mainly focus on the complexity of determining the generalized connectivity of a graph. At first, we obtain that for two fixed positive integers k 1 and k 2, given a graph G and a k 1-subset S of V(G), the problem of deciding whether G contains k 2 internally disjoint trees connecting S can be solved by a polynomial-time algorithm. Then, we show that when k 1 is a fixed integer of at least 4, but k 2 is not a fixed integer, the problem turns out to be NP-complete. On the other hand, when k 2 is a fixed integer of at least 2, but k 1 is not a fixed integer, we show that the problem also becomes NP-complete.  相似文献   

13.
In telecommunication networks design the problem of obtaining optimal (arc or node) disjoint paths, for increasing network reliability, is extremely important. The problem of calculating k c disjoint paths from s to t (two distinct nodes), in a network with k c different (arbitrary) costs on every arc such that the total cost of the paths is minimised, is NP-complete even for k c =2. When k c =2 these networks are usually designated as dual arc cost networks.  相似文献   

14.
Approximation algorithms for connected facility location problems   总被引:1,自引:1,他引:0  
We study Connected Facility Location problems. We are given a connected graph G=(V,E) with nonnegative edge cost c e for each edge eE, a set of clients DV such that each client jD has positive demand d j and a set of facilities FV each has nonnegative opening cost f i and capacity to serve all client demands. The objective is to open a subset of facilities, say , to assign each client jD to exactly one open facility i(j) and to connect all open facilities by a Steiner tree T such that the cost is minimized for a given input parameter M≥1. We propose a LP-rounding based 8.29 approximation algorithm which improves the previous bound 8.55 (Swamy and Kumar in Algorithmica, 40:245–269, 2004). We also consider the problem when opening cost of all facilities are equal. In this case we give a 7.0 approximation algorithm.  相似文献   

15.
Let T = (V,E,w) be an undirected and weighted tree with node set V and edge set E, where w(e) is an edge weight function for e E. The density of a path, say e1, e2,..., ek, is defined as ki = 1 w(ei)/k. The length of a path is the number of its edges. Given a tree with n edges and a lower bound L where 1 L n, this paper presents two efficient algorithms for finding a maximum-density path of length at least L in O(nL) time. One of them is further modified to solve some special cases such as full m-ary trees in O(n) time.  相似文献   

16.
For a positive integer k, a total {k}-dominating function of a graph G is a function f from the vertex set V(G) to the set {0,1,2,…,k} such that for any vertex vV(G), the condition ∑ uN(v) f(u)≥k is fulfilled, where N(v) is the open neighborhood of v. A set {f 1,f 2,…,f d } of total {k}-dominating functions on G with the property that ?i=1dfi(v) £ k\sum_{i=1}^{d}f_{i}(v)\le k for each vV(G), is called a total {k}-dominating family (of functions) on G. The maximum number of functions in a total {k}-dominating family on G is the total {k}-domatic number of G, denoted by dt{k}(G)d_{t}^{\{k\}}(G). Note that dt{1}(G)d_{t}^{\{1\}}(G) is the classic total domatic number d t (G). In this paper we initiate the study of the total {k}-domatic number in graphs and we present some bounds for dt{k}(G)d_{t}^{\{k\}}(G). Many of the known bounds of d t (G) are immediate consequences of our results.  相似文献   

17.
An edge coloring of a graph G=(V,E) is a function c:E→ℕ that assigns a color c(e) to each edge eE such that c(e)≠c(e′) whenever e and e′ have a common endpoint. Denoting S v (G,c) the set of colors assigned to the edges incident to a vertex vV, and D v (G,c) the minimum number of integers which must be added to S v (G,c) to form an interval, the deficiency D(G,c) of an edge coloring c is defined as the sum ∑ vV D v (G,c), and the span of c is the number of colors used in c. The problem of finding, for a given graph, an edge coloring with a minimum deficiency is NP-hard. We give new lower bounds on the minimum deficiency of an edge coloring and on the span of edge colorings with minimum deficiency. We also propose a tabu search algorithm to solve the minimum deficiency problem and report experiments on various graph instances, some of them having a known optimal deficiency.  相似文献   

18.
In a graph G, a vertex dominates itself and its neighbors. A subset SeqV(G) is an m-tuple dominating set if S dominates every vertex of G at least m times, and an m-dominating set if S dominates every vertex of GS at least m times. The minimum cardinality of a dominating set is γ, of an m-dominating set is γ m , and of an m-tuple dominating set is mtupledom. For a property π of subsets of V(G), with associated parameter f_π, the k-restricted π-number r k (G,f_π) is the smallest integer r such that given any subset K of (at most) k vertices of G, there exists a π set containing K of (at most) cardinality r. We show that for 1< k < n where n is the order of G: (a) if G has minimum degree m, then r k (G m ) < (mn+k)/(m+1); (b) if G has minimum degree 3, then r k (G,γ) < (3n+5k)/8; and (c) if G is connected with minimum degree at least 2, then r k (G,ddom) < 3n/4 + 2k/7. These bounds are sharp. Research supported in part by the South African National Research Foundation and the University of KwaZulu-Natal.  相似文献   

19.
In the binary single constraint Knapsack Problem, denoted KP, we are given a knapsack of fixed capacity c and a set of n items. Each item j, j = 1,...,n, has an associated size or weight wj and a profit pj. The goal is to determine whether or not item j, j = 1,...,n, should be included in the knapsack. The objective is to maximize the total profit without exceeding the capacity c of the knapsack. In this paper, we study the sensitivity of the optimum of the KP to perturbations of either the profit or the weight of an item. We give approximate and exact interval limits for both cases (profit and weight) and propose several polynomial time algorithms able to reach these interval limits. The performance of the proposed algorithms are evaluated on a large number of problem instances.  相似文献   

20.
For two positive integers j and k with jk, an L(j,k)-labeling of a graph G is an assignment of nonnegative integers to V(G) such that the difference between labels of adjacent vertices is at least j, and the difference between labels of vertices that are distance two apart is at least k. The span of an L(j,k)-labeling of a graph G is the difference between the maximum and minimum integers used by it. The L(j,k)-labelings-number of G is the minimum span over all L(j,k)-labelings of G. This paper focuses on L(2,1)-labelings-number of the edge-path-replacement G(P k ) of a graph G. Note that G(P 3) is the incidence graph of G. L(2,1)-labelings of the edge-path-replacement G(P 3) of a graph, called (2,1)-total labeling of G, was introduced by Havet and Yu in 2002 (Workshop graphs and algorithms, Dijon, France, 2003; Discrete Math. 308:498–513, 2008). They (Havet and Yu, Discrete Math. 308:498–513, 2008) obtain the bound $\Delta+1\leq\lambda^{T}_{2}(G)\leq2\Delta+1$ and conjectured $\lambda^{T}_{2}(G)\leq\Delta+3$ . In this paper, we obtain that λ(G(P k ))≤Δ+2 for k≥5, and conjecture λ(G(P 4))≤Δ+2 for any graph G with maximum degree Δ.  相似文献   

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