Download presentation
Presentation is loading. Please wait.
1
2018/12/27 chapter25
2
2018/12/27 chapter25
3
2018/12/27 chapter25
4
2018/12/27 chapter25
5
d* Spacing of C ≤d(p, q)≤d*. 2018/12/27 chapter25
6
An Example K=3. 2018/12/27 chapter25
7
4.4 Single-Source Shortest Paths
Problem Definition Shortest paths and Relaxation Dijkstra’s algorithm (can be viewed as a greedy algorithm) 2018/12/27 chapter25
8
Problem Definition: Real problem: A motorist wishes to find the shortest possible route from Chicago to Boston.Given a road map of the United States on which the distance between each pair of adjacent intersections is marked, how can we determine this shortest route? Formal definition: Given a directed graph G=(V, E, W), where each edge has a weight, find a shortest path from s to v for some interesting vertices s and v. s—source v—destination. 2018/12/27 chapter25
9
Find a shortest path from station A to station B.
-need serious thinking to get a correct algorithm. 2018/12/27 chapter25
10
The cost of the shortest path from s to v is denoted as (s, v).
The weight of path p=<v0,v1,…,vk > is the sum of the weights of its constituent edges: The cost of the shortest path from s to v is denoted as (s, v). 2018/12/27 chapter25
11
Negative-Weight edges:
Edge weight may be negative. negative-weight cycles– the total weight in the cycle (circuit) is negative. If no negative-weight cycles reachable from the source s, then for all v V, the shortest-path weight remains well defined,even if it has a negative value. If there is a negative-weight cycle on some path from s to v, we define = 2018/12/27 chapter25
12
a b -4 h i 3 -1 2 4 3 c d 6 8 5 -8 3 5 11 g s -3 e 3 f 2 7 j -6 Figure1 Negative edge weights in a directed graph.Shown within each vertex is its shortest-path weight from source s.Because vertices e and f form a negative-weight cycle reachable from s,they have shortest-path weights of Because vertex g is reachable from a vertex whose shortest path is ,it,too,has a shortest-path weight of Vertices such as h, i ,and j are not reachable from s,and so their shortest-path weights are , even though they lie on a negative-weight cycle. 2018/12/27 chapter25
13
Representing shortest paths:
we maintain for each vertex vV , a predecessor [ v] that is the vertex in the shortest path right before v. With the values of , a backtracking process can give the shortest path. (We will discuss that after the algorithm is given) 2018/12/27 chapter25
14
Observation: (basic) Suppose that a shortest path p from a source s to a vertex v can be decomposed into s u v for some vertex u and path p’. Then, the weight of a shortest path from s to v is We do not know what is u for v, but we know u is in V and we can try all nodes in V in O(n) time. Also, if u does not exist, the edge (s, v) is the shortest. Question: how to find (s, u), the first shortest from s to some node? 2018/12/27 chapter25
15
Relaxation: The process of relaxing an edge (u,v) consists of testing whether we can improve the shortest path to v found so far by going through u and,if so,updating d[v] and [v]. RELAX(u,v,w) if d[v]>d[u]+w(u,v) then d[v] d[u]+w(u,v) (based on observation) [v] u 2018/12/27 chapter25
16
u v u v 2 2 5 9 5 6 RELAX(u,v) RELAX(u,v) u v u v 2 2 5 7 5 6 (a) (b)
Figure2 Relaxation of an edge (u,v).The shortest-path estimate of each vertex is shown within the vertex. (a)Because d[v]>d[u]+w(u,v) prior to relaxation, the value of d[v] decreases. (b)Here, d[v] d[u]+w(u,v) before the relaxation step,so d[v] is unchanged by relaxation. 2018/12/27 chapter25
17
Initialization: For each vertex v V, d[v] denotes an upper bound on the weight of a shortest path from source s to v. d[v]– will be (s, v) after the execution of the algorithm. initialize d[v] and [v] as follows: . INITIALIZE-SINGLE-SOURCE(G,s) for each vertex v V[G] do d[v] [v] NIL d[s] 2018/12/27 chapter25
18
Dijkstra’s Algorithm:
Dijkstra’s algorithm assumes that w(e)0 for each e in the graph. maintain a set S of vertices such that Every vertex v S, d[v]=(s, v), i.e., the shortest-path from s to v has been found. (Intial values: S=empty, d[s]=0 and d[v]=) (a) select the vertex uV-S such that d[u]=min {d[x]|x V-S}. Set S=S{u} (b) for each node v adjacent to u do RELAX(u, v, w). Repeat step (a) and (b) until S=V. 2018/12/27 chapter25
19
Continue: DIJKSTRA(G,w,s): INITIALIZE-SINGLE-SOURCE(G,s) S Q V[G]
while Q do u EXTRACT -MIN(Q) S S {u} for each vertex v Adj[u] do RELAX(u,v,w) 2018/12/27 chapter25
20
Implementation: a priority queue Q stores vertices in V-S, keyed by their d[] values. the graph G is represented by adjacency lists. 2018/12/27 chapter25
21
u v 10 5 2 1 3 4 6 9 7 8 s Single Source Shortest Path Problem x y (a) 2018/12/27 chapter25
22
u v 1 10/s 8 10 9 s 2 3 4 6 7 5 5/s 8 2 x y (b) (s,x) is the shortest path using one edge. It is also the shortest path from s to x. 2018/12/27 chapter25
23
u v 1 8/x 14/x 10 9 s 2 3 4 6 7 5 5/s 7/x 2 x y (c) 2018/12/27 chapter25
24
u v 1 8/x 13/y 10 9 s 2 3 4 6 7 5 5/s 7/x 2 x y (d) 2018/12/27 chapter25
25
7/x 9/u 5/s 8/x 10 5 2 1 3 4 6 9 7 s u v x y (e) 2018/12/27 chapter25
26
Backtracking: v-u-x-s
1 8/x 9/u 10 9 s 2 3 4 6 7 5 5/s 7/x 2 x y (f) Backtracking: v-u-x-s 2018/12/27 chapter25
27
Proof: We prove it by induction on |S|.
Theorem: Consider the set S at any time in the algorithm’s execution. For each vS, the path Pv is a shortest s-v path. Proof: We prove it by induction on |S|. If |S|=1, then the theorem holds. (Because d[s]=0 and S={s}.) Suppose that the theorem is true for |S|=k for some k>0. Now, we grow S to size k+1 by adding the node v. 2018/12/27 chapter25
28
Proof: (continue) y x That is, the length of any path d[v]. s u v
Now, we grow S to size k+1 by adding the node v. Let (u, v) be the last edge on our s-v path Pv. Consider any other path from P: s,…,x,y, …, v. (red in the Fig.) Case 1: y is the first node that is not in S and xS. Since we always select the node with the smallest value d[] in the algorithm, we have d[v]d[y]. Moreover, the length of each edge is 0. Thus, the length of Pd[y]d[v]. That is, the length of any path d[v]. y x Case 2: such a y does not exist. d[v]=d[u]+w(u, v)d[x]+w(x, v). That is, the length of any path d[v]. s u v Set S 2018/12/27 chapter25
29
S->v is shorter than s->u, but it is longer than
The algorithm does not work if there are negative weight edges in the graph . u -10 2 v s 1 S->v is shorter than s->u, but it is longer than s->u->v. 2018/12/27 chapter25
30
Time complexity of Dijkstra’s Algorithm:
Time complexity depends on implementation of the Queue. Method 1: Use an array to story the Queue EXTRACT -MIN(Q) --takes O(|V|) time. Totally, there are |V| EXTRACT -MIN(Q)’s. time for |V| EXTRACT -MIN(Q)’s is O(|V|2). RELAX(u,v,w) --takes O(1) time. Totally |E| RELAX(u, v, w)’s are required. time for |E| RELAX(u,v,w)’s is O(|E|). Total time required is O(|V|2+|E|)=O(|V|2) Backtracking with [] gives the shortest path in inverse order. Method 2: The priority queue is implemented as a adaptable heap. It takes O(log n) time to do EXTRACT-MIN(Q). The total running time is O(|E|log n ). 2018/12/27 chapter25
31
A problem Let us design a keyboard for a mechanical hand. The keyboard has 26 letters A, B, …, Z arranged in one row. The hand is always at the left end of the row and it comes back to the left end after pressing a key. Assume that we know the frequency of every letter. Design the order of the 26 letters in the row such that the average length of movement of the mechanical hand is minimized. Prove that your solution is correct. 2018/12/27 chapter25
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.