Graphs 7/18/2018 7:39 AM Presentation for use with the textbook Data Structures and Algorithms in Java, 6th edition, by M. T. Goodrich, R. Tamassia, and.

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Graphs 7/18/2018 7:39 AM Presentation for use with the textbook Data Structures and Algorithms in Java, 6th edition, by M. T. Goodrich, R. Tamassia, and M. H. Goldwasser, Wiley, 2014 Graphs 1843 ORD SFO 802 1743 337 LAX 1233 DFW Graphs

Graphs PVD ORD SFO LGA HNL LAX DFW MIA A graph is a pair (V, E), where V is a set of nodes, called vertices E is a collection of pairs of vertices, called edges Vertices and edges are positions and store elements Example: A vertex represents an airport and stores the three-letter airport code An edge represents a flight route between two airports and stores the mileage of the route 849 PVD 1843 ORD 142 SFO 802 LGA 1743 337 1387 HNL 2555 1099 LAX 1233 DFW 1120 MIA Graphs

Edge Types flight AA 1206 ORD PVD 849 miles ORD PVD Directed edge ordered pair of vertices (u,v) first vertex u is the origin second vertex v is the destination e.g., a flight Undirected edge unordered pair of vertices (u,v) e.g., a flight route Directed graph all the edges are directed e.g., route network Undirected graph all the edges are undirected e.g., flight network flight AA 1206 ORD PVD 849 miles ORD PVD Graphs

Applications Electronic circuits Transportation networks Printed circuit board Integrated circuit Transportation networks Highway network Flight network Computer networks Local area network Internet Web Databases Entity-relationship diagram Graphs

Terminology X U V W Z Y a c b e d f g h i j End vertices (or endpoints) of an edge U and V are the endpoints of a Edges incident on a vertex a, d, and b are incident on V Adjacent vertices U and V are adjacent Degree of a vertex X has degree 5 Parallel edges h and i are parallel edges Self-loop j is a self-loop X U V W Z Y a c b e d f g h i j Graphs

Terminology (cont.) V a b P1 d U X Z P2 h c e W g f Y Path Simple path sequence of alternating vertices and edges begins with a vertex ends with a vertex each edge is preceded and followed by its endpoints Simple path path such that all its vertices and edges are distinct Examples P1=(V,b,X,h,Z) is a simple path P2=(U,c,W,e,X,g,Y,f,W,d,V) is a path that is not simple V a b P1 d U X Z P2 h c e W g f Y Graphs

Terminology (cont.) V a b d U X Z C2 h e C1 c W g f Y Cycle circular sequence of alternating vertices and edges each edge is preceded and followed by its endpoints Simple cycle cycle such that all its vertices and edges are distinct Examples C1=(V,b,X,g,Y,f,W,c,U,a,) is a simple cycle C2=(U,c,W,e,X,g,Y,f,W,d,V,a,) is a cycle that is not simple V a b d U X Z C2 h e C1 c W g f Y Graphs

Properties Sv deg(v) = 2m Property 1 Property 2 Proof: each edge is counted twice Property 2 In an undirected graph with no self-loops and no multiple edges m  n (n - 1)/2 Proof: each vertex has degree at most (n - 1) What is the bound for a directed graph? Notation n number of vertices m number of edges deg(v) degree of vertex v Example n = 4 m = 6 deg(v) = 3 Graphs

Vertices and Edges A graph is a collection of vertices and edges. We model the abstraction as a combination of three data types: Vertex, Edge, and Graph. A Vertex is a lightweight object that stores an arbitrary element provided by the user (e.g., an airport code) We assume it supports a method, element(), to retrieve the stored element. An Edge stores an associated object (e.g., a flight number, travel distance, cost), retrieved with the element( ) method. Graphs

Graph ADT Graphs

Edge List Structure Vertex object Edge object Vertex sequence element reference to position in vertex sequence Edge object origin vertex object destination vertex object reference to position in edge sequence Vertex sequence sequence of vertex objects Edge sequence sequence of edge objects Graphs

Adjacency List Structure Incidence sequence for each vertex sequence of references to edge objects of incident edges Augmented edge objects references to associated positions in incidence sequences of end vertices Graphs

Adjacency Matrix Structure Edge list structure Augmented vertex objects Integer key (index) associated with vertex 2D-array adjacency array Reference to edge object for adjacent vertices Null for non nonadjacent vertices The “old fashioned” version just has 0 for no edge and 1 for edge Graphs

Performance Edge List Adjacency List Adjacency Matrix Space n + m n2 n vertices, m edges no parallel edges no self-loops Edge List Adjacency List Adjacency Matrix Space n + m n2 incidentEdges(v) m deg(v) n areAdjacent (v, w) min(deg(v), deg(w)) 1 insertVertex(o) insertEdge(v, w, o) removeVertex(v) removeEdge(e) Graphs