Notes for Algorithms, Part II: Undirected Graphs
This is a note for 4.1 Undirected Graphs, Algorithms, Part II.
Introduction
Some graph-processing problems
- Path. Is there a path between
and ? - Shortest path. What is the shortest path between
and ? - Cycle. Is there a cycle in the graph?
- Euler tour. Is there a cycle that uses each edge exactly once?
- Hamilton tour. Is there a cycle that uses each vertex exactly once? (classical NP-complete problem)
- Connectivity. Is there a way to connect all of the vertices?
- MST (Minimal Spanning Tree, 最小生成树). What is the best way to connect all of the vertices?
- Biconnectivity (双连通性). Is there a vertex whose removal disconnects the graph? (DFS)
- Planarity. Can you draw the graph in the plane with no crossing edges? (linear-time DFS-based planarity algorithm discovered by Tarjan in 1970s)
- Graph isomorphism (同构). Do two adjacency lists represent the same graph? (graph isomorphism is longstanding open problem, 长期悬而未决)
Graph API
Typical graph-processing code
- compute the degree of
public static in degree(Graph G, int v) {
int degree = 0;
for (int w : G.adj(v)) degree++;
return degree;
}
- compute maximum degree
public static int maxDegree(Graph G) {
int max = 0;
for (int v = 0; v < G.V(); v++) {
if (degree(G, v) > max) {
max = degree(G, v);
}
}
return max;
}
- compute average degree
public static double averageDegree(Graph G) {
return 2.0 * G.E() / G.V();
}
- compute self-loops
public static int numberOfSelfLoops(Graph G) {
int count = 0;
for (int v = 0; v < G.V(); v++) {
for (int w : G.adj(v)) {
if (v == w) {
count++;
}
}
}
return count / 2; // each edge counted twice
}
Representations
- Set-of-edges graph representation
- Adjacency-matrix graph representation
- Adjacency-list graph representation
representation | space | add edge | edge between v and w? | iterate over vertices adjacent to v? |
---|---|---|---|---|
list of edges | E | 1 | E | E |
adjacency matrix | V^2 | 1* | 1 | V |
adjacency lists | E+V | 1 | degree(v) | degree(v) |
* disallows parallel edges
Adjacency-list graph representation: Java implementation
public class Graph {
private final int V;
private Bag<Integer>[] adj; // adjacency lists (using Bag data type)
public Graph(int V) {
this.V = V;
adj = (Bag<Integer>[]) new Bag[V]; // create empty graph with V vertices
for (int v = 0; v < V; v++) {
adj[v] = new Bag<Integer>();
}
}
public void addEdge(int v, int w) {
adj[v].add(w); // add edge v-w
adj[w].add(v); // (parallel edges and self-loops allowed)
}
public Iterable<Integer> adj(int v) {
return adj[v];
}
}
Depth-first search
DFS (to visit a vertex
- Mark
as visited - Recursively visit all unmarked vertices
adjacent to
public class DepthFirstPaths {
private boolean[] marked; // marked[v] = true if v connected to s
private int[] edgeTo; // edgeTo[v] = previous vertex on path from s to v
private int s;
public DepthFirstPaths(Graph G, int s) {
... // initialize data structures
dfs(G, s); // find vertices connected to s
}
private void dfs(Graph G, int v) {
marked[v] = true;
for (int w : G.adj(v)) {
if (!marked[w]) {
dfs(G, w);
edgeTo[w] = v;
}
}
}
}
DFS marks all vertices connected to
After DFS, can find vertices connected to
public boolean hasPathTo(int v) {
return marked[v];
}
public Iterable<Integer> pathTo(int v) {
if (!hasPathTo(v)) return null;
Stack<Integer> path = new Stack<Integer>();
for (int x = v; x != s; x = edgeTo[x])
path.push(x);
path.push(s);
return path;
}
Breadth-first search
BFS (from source vertex
- Put
onto a FIFO queue, and mark as visited - Repeat until the queue is empty:
- remove the least recently added vertex
- add each of
‘s unvisited neighbors to the queue, and mark them as visited
- remove the least recently added vertex
BFS computes shortest paths from
public class BreadthFirstPaths {
private boolean[] marked;
private int[] edgeTo;
...
private void bfs(Graph G, int s) {
Queue<Integer> q = new Queue<Integer>();
q.enqueue(s);
marked[s] = true;
while (!q.isEmpty()) {
int v = q.dequeue();
for (int w : G.adj(v)) {
if (!marked[w]) {
q.enqueue(w);
marked[w] = true;
edgeTo[w] = v;
}
}
}
}
}
Connected components
Connected components:
- Initialize all vertices
as unmarked - For each unmarked vertex
, run DFS to identify all vertices discovered as part of the same component
public class CC {
private boolean[] marked;
private int[] id; // id[v] = id of component containing v
private int count; // number of components
public CC(Graph G) {
marked = new boolean[G.V()];
id = new int[G.V()];
for (int v = 0; v < G.V(); v++) {
if (!marked[v]) {
dfs(G, v);
count++;
}
}
}
public int count() {
return count;
}
public int id(int v) {
return id[v];
}
private void dfs(Graph G, int v) {
marked[v] = true;
id[v] = count;
for (int w : G.adj(v)) {
if (!marked[w]) {
dfs(G, w);
}
}
}
}