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CSE 326: Data Structures: Graphs

CSE 326: Data Structures: Graphs. Lecture 19: Monday, Feb 24, 2003. Outline. Graphs: Definitions Properties Examples Topological Sort Graph Traversals Depth First Search Breadth First Search. TO DO: READ WEISS CH 9. Han. Luke. Leia. Graphs.

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CSE 326: Data Structures: Graphs

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  1. CSE 326: Data Structures: Graphs Lecture 19: Monday, Feb 24, 2003

  2. Outline • Graphs: • Definitions • Properties • Examples • Topological Sort • Graph Traversals • Depth First Search • Breadth First Search TO DO: READ WEISS CH 9

  3. Han Luke Leia Graphs Graphs = formalism for representing relationships between objects • A graph G = (V, E) • Vis a set of vertices • E  V  V is a set of edges V = {Han, Leia, Luke} E = {(Luke, Leia), (Han, Leia), (Leia, Han)}

  4. Directed vs. Undirected Graphs • In directed graphs, edges have a specific direction: • In undirected graphs, they don’t (edges are two-way): • Vertices u and v are adjacent if (u, v)  E Han Luke Leia Han Luke Leia

  5. Weighted Graphs Each edge has an associated weight or cost. 20 Clinton Mukilteo 30 Kingston Edmonds 35 Bainbridge Seattle 60 Bremerton There may be more information in the graph as well.

  6. Paths and Cycles A path is a list of vertices {v1, v2, …, vn} such that (vi, vi+1)  E for all 0  i < n. A cycle is a path that begins and ends at the same node. Chicago Seattle Salt Lake City San Francisco Dallas p = {Seattle, Salt Lake City, Chicago, Dallas, San Francisco, Seattle}

  7. Path Length and Cost Path length: the number of edges in the path Path cost: the sum of the costs of each edge Chicago 3.5 Seattle 2 2 Salt Lake City 2 2.5 2.5 2.5 3 San Francisco Dallas length(p) = 5 cost(p) = 11.5

  8. Connectivity Undirected graphs are connected if there is a path between any two vertices Directed graphs are strongly connected if there is a path from any one vertex to any other

  9. Connectivity Directed graphs are weakly connected if there is a path between any two vertices, ignoring direction A complete graph has an edge between every pair of vertices

  10. Connectivity A (strongly) connected component is a subgraph which is (strongly) connected CC in an undirected graph: SCC in a directed graph:

  11. Distance and Diameter • The distance between two nodes, d(u,v), is the length of the shortest paths, or  if there is no path • The diameter of a graph is the largest distance between any two nodes • Graph is strongly connected iff diameter < 

  12. An Interesting Graph • The Web ! • Each page is a vertice • Each hyper-link is an edge • How many nodes ? • Is it connected ? • What is its diameter ?

  13. The Web Graph

  14. Other Graphs • Geography: • Cities and roads • Airports and flights (diameter  20 !!) • Publications: • The co-authorship graph • E.g. the Erdos distance • The reference graph • Phone calls: who calls whom • Almost everything can be modeled as a graph !

  15. Han Luke Leia Graph Representation 1: Adjacency Matrix A |V| x |V| array in which an element (u, v) is true if and only if there is an edge from uto v Han Luke Leia Han Luke Runtime: iterate over vertices iterate ever edges iterate edges adj. to vertex edge exists? Leia Space requirements:

  16. Han Luke Leia Graph Representation 2: Adjacency List A |V|-ary list (array) in which each entry stores a list (linked list) of all adjacent vertices Han Luke Runtime: iterate over vertices iterate ever edges iterate edges adj. to vertex edge exists? Leia space requirements:

  17. Graph Density A sparse graph has O(|V|) edges A dense graph has (|V|2) edges Anything in between is either sparsish or densy depending on the context.

  18. Trees as Graphs • Every tree is a graph with some restrictions: • the tree is directed • there are no cycles (directed or undirected) • there is a directed path from the root to every node A B C D E F G H BAD! I J

  19. Directed Acyclic Graphs (DAGs) DAGs are directed graphs with no cycles. main() mult() if program call graph is a DAG, then all procedure calls can be in-lined add() read() access() Trees  DAGs  Graphs

  20. Application of DAGs: Representing Partial Orders reserve flight check in airport call taxi pack bags take flight locate gate taxi to airport

  21. Topological Sort Given a graph, G = (V, E), output all the vertices in V such that no vertex is output before any other vertex with an edge to it. reserve flight check in airport call taxi take flight taxi to airport locate gate pack bags

  22. Topological Sort reserve flight take flight call taxi check in airport locate gate pack bags taxi to airport

  23. Label each vertex’s in-degree (# of inbound edges) While there are vertices remaining Pick a vertex with in-degree of zero and output it Reduce the in-degree of all vertices adjacent to it Remove it from the list of vertices Topo-Sort Take One runtime:

  24. Label each vertex’s in-degree Initialize a queue to contain all in-degree zero vertices While there are vertices remaining in the queue Remove a vertex v with in-degree of zero and output it Reduce the in-degree of all vertices adjacent to v Put any of these with new in-degree zero on the queue Topo-Sort Take Two runtime: Can we use a stack instead of a queue ?

  25. Topo-Sort • So we sort again in linear time: O(|V|+|E|) • Can we apply this to normal sorting ?If we sort an array A[1], A[2], ..., A[n] using topo-sort, what is the running time ?

  26. Recall: Tree Traversals a e b c d h i j f g k l a b f g k c d h i l j e

  27. Depth-First Search • Pre/Post/In – order traversals are examples of depth-first search • Nodes are visited deeply on the left-most branches before any nodes are visited on the right-most branches • Visiting the right branches deeply before the left would still be depth-first! Crucial idea is “go deep first!” • Difference in pre/post/in-order is how some computation (e.g. printing) is done at current node relative to the recursive calls • In DFS the nodes “being worked on” are kept on a stack

  28. void DFS(Node startNode) { Stack s = new Stack; s.push(startNode); while (!s.empty()) { x = s.pop(); /* process x */ for y in x.children() do s.push(y); } DFS

  29. DFS on Trees a e b c d h i j f g k l

  30. DFS on Graphs a e b c d h i j f g k l Problem with cycles: may run into an infinite loop

  31. DFS • void DFS(Node startNode) { • for v in Nodes do • v.visited = false; • Stack s = new Stack; • s.push(startNode); • while (!s.empty()) { • x = s.pop(); • x.visited = true; • /* process x */ • for y in x.children() do • if (!y.visited) s.push(y); • } Running time:

  32. a e b c d h i j f g k l Breadth-First Search • Traversing tree level by level fromtop to bottom (alphabetic order)

  33. Breadth-First Search BFS characteristics • Nodes being worked on maintained in a FIFO Queue, not a stack • Iterative style procedures often easier to design than recursive procedures

  34. Breadth-First Search • void DFS(Node startNode) { • for v in Nodes do • v.visited = false; • Stack s = new Stack; • s.push(startNode); • while (!s.empty()) { • x = s.pop(); • x.visited = true; • /* process x */ • for y in x.children() do • if (!y.visited) s.push(y); • } • void BFS(Node startNode) { • for v in Nodes do • v.visited = false; • Queue s = new Queue; • s.enqueue(startNode); • while (!s.empty()) { • x = s.dequeue(); • x.visited = true; • /* process x */ • for y in x.children() do • if (!y.visited) s.enqueue(y); • }

  35. a e b c d h i j f g k l QUEUE a b c d e c d e f g d e f g e f g h i j f g h i j g h i j h i j k i j k j k l k l l

  36. Graph Traversals DFS and BFS • Either can be used to determine connectivity: • Is there a path between two given vertices? • Is the graph (weakly) connected? • Important difference: Breadth-first search always finds a shortest path from the start vertex to any other (for unweighted graphs) • Depth first search may not!

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