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Last Updated on March 28, 2022 by Ria Pathak

Concepts Used

Breadth First Search, Disjoint Set

Difficulty Level

Easy

Problem Statement :

Given an undirected graph, print Yes if a cycle is present in the graph else print No.

See original problem statement here

Solution Approach :

Introduction :

Cycle in a graph means there’s a loop in between its edges.
If we traverse a graph and after visited certain vertices we reach the vertex from where we have started, then the graph is said to have a cycle or a loop.

For every visited vertex v, when we have found any adjacent vertex u, such that u is already visited, and u is not the parent of vertex v. Then one cycle is detected.
This problem can be solved by many ways like Breadth First Search, Depth First Search or Disjoint Set.

Method 1 (Using BFS) :

In this method we are going to use Breadth First Search or BFS to find cycle in a graph. In dfs for each vertex v we iterate through all its adjacent vertices and for each vertex a and mark it visited, further make v the parent of a (so that parent is not considered for cycle).

If there is any vertex a which is already visited earlier, then we check if it is the parent of a or not. If not, then there exist a cycle.

Method 2 (Using Disjoint Set) :

Disjoint Set Union or DSU data structure is also sometimes called Union-Find Set. This data structure is used to keep track of the different disjoint sets.
It basically performs two operations :

  1. Union : It takes two vertices and join them in a single set (if it is not already there).
  2. Find : Determines in which subset the element is.

We will use a parent[] array to keep track of the parents of each vertex. ith element will store the root/parent of ith vertex. Now for every edge (uv) , check if the root of u and v is same using find(), if the root is same then there exist a cycle. If not, perform union() with both vertices to update the parent[] array.

How is the above approach actually working?
Each disjoint set stores the vertices which are connected (directly or indirectly) to each other and has no relation/connection with any other vertex (as it is non overlapping set), so if there is any pair of vertices (edge) which belongs to the same set this will create a cycle in the graph as they belong to the same root vertex and they are also connected with each other.

Algorithms :

union() :

  1. For two vertices u & v, find the root for both vertices using find() (a=find(u) & b = find(v)).
  2. If the root of u & v are not similar, check the level of a & b as follows:
    • if (level[a]>* else if (level[a]>level[b]), update parent[b] = a`.
    • else , update parent[b]=a & update level[a] = level[a]+1

find() :

  1. If (parent[v]==v), returns the vertex v (which is root).
  2. Else, update parent[v] by recursively looking up the tree for the root. (find(parent[v])).

Complexity Analysis:

The time complexity of Breadth First Search is represented in the form of O(V + E), where V is the number of nodes and E is the number of edges.

The space complexity of the algorithm is O(V) as it requires two arrays ( visited[ ] & parent[ ]) of size V.

Talking about Union-Find data structure, since we have used path compression & union by level (refer to Disjoint Set article for more detailed explanation), we will reach nearly constant time O(1) for each query. It turns out, that the final amortized time complexity is O(α(V)), where α(V) is the inverse Ackermann function, which grows very slowly (α(V)<5). In our case a single call might take O(logn) in the worst case, but if we do m such calls back to back we will end up with an average time of O(α(n)).

Solutions:

#include<stdio.h>

    int findd(int parent[],int i)
    {
     if(parent[i]==i)
        return i;

    return parent[i] = findd(parent, parent[i]);
    }

    void unionn(int parent[],int level[],int i,int j)
    {
    int a = findd(parent,i);
    int b = findd(parent,j);

    if(level[a]<level[b])
     parent[a]=b;
    else if(level[a]>level[b])
     parent[b]=a;
    else{
        parent[b]=a;
        level[a]++;
    }
    }


    int main()
    {
    int n,m,flag=1;
    scanf("%d %d", &n,&m);
    int parent[n+1],level[n+1];

    for(int i=1;i<=n;i++)
     {parent[i]=i;level[i]=0;}

    while(m--)
    {
      int u,v;
      scanf("%d %d", &u,&v);
      u +=1;
      v +=1;

        int a = findd(parent,u);
        int b = findd(parent,v);

        if(a==b)
        {
            flag = 0;
            break;
        }
        unionn(parent,level,u,v);
    }
        if(flag!=1)
            printf("%s\n","Yes");
        else
            printf("%s\n","No");

        return 0;
    }
#include <bits/stdc++.h>
    using namespace std;

    int findd(int parent[],int i)
    {
        if(parent[i]==i)
         return i;

        return parent[i] = findd(parent, parent[i]);
    }

    void unionn(int parent[],int level[],int i,int j)
    {
        int a = findd(parent,i);
        int b = findd(parent,j);

        if(level[a]<level[b])
            parent[a]=b;
        else if(level[a]>level[b])
            parent[b]=a;
        else{
            parent[b]=a;
            level[a]++;
        }
    }


    int main()
    {
    int n,m;
    cin>>n>>m;
    int parent[n+1],level[n+1]={0};

    for(int i=1;i<=n;i++)
     {parent[i]=i;level[i]=0;}

    string ans = "No";
    while(m--)
    {
      int u,v;
      cin>>u>>v;
      u +=1;
      v +=1;

      int a = findd(parent,u);
      int b = findd(parent,v);

      if(a==b)
      {
        ans = "Yes";
        break;
      }
      unionn(parent,level,u,v);
    }
    cout<<ans<<endl;

    return 0;
    }
import java.util.*; 

    class Main
    { 

    public static void main(String arg[]) 
    { 
    Scanner sc = new Scanner(System.in);
          int V = sc.nextInt();
          int e = sc.nextInt();
          ArrayList <Integer> adj[] = new ArrayList[V]; 
          for(int i = 0; i < V; i++) 
              adj[i] = new ArrayList<Integer>(); 
      while(e-->0)
      {
        int u = sc.nextInt();
        int v = sc.nextInt();
            addEdge(adj, u,v);; 
      }

        if (isCyclicDisconntected(adj, V) == true) 
            System.out.println("Yes"); 
        else
            System.out.println("No"); 


    } 

    static void addEdge(ArrayList<Integer> adj[], int u, int v) 
    { 
        adj[u].add(v); 
        adj[v].add(u); 
    } 

    static boolean isCyclicConntected(ArrayList<Integer> adj[], int s,int V, boolean visited[]) 
        { 

            // Set parent vertex for every vertex as -1. 
            int parent[] = new int[V]; 
            Arrays.fill(parent, -1); 

            // Create a queue for BFS 
            Queue<Integer> q = new LinkedList<>(); 

            // Mark the current node as 
            // visited and enqueue it 
            visited[s] = true; 
            q.add(s); 

            while (!q.isEmpty()) 
            { 

                int u = q.poll(); 

                for (int i=0; i<adj[u].size();i++) 
                { 
                    int v = adj[u].get(i); 
                    if (!visited[v]) 
                    { 
                        visited[v] = true; 
                        q.add(v); 
                        parent[v] = u; 
                    } 
                    else if (parent[u] != v) 
                        return true; 
                } 
            } 
            return false; 
        } 


    static boolean isCyclicDisconntected(ArrayList<Integer> adj[], int V) 
        { 

            // Mark all the vertices as not visited 
            boolean visited[] = new boolean[V]; 
            Arrays.fill(visited,false); 

            for (int i = 0; i < V; i++) 
                if (!visited[i] && 
                    isCyclicConntected(adj, i, V, visited)) 
                    return true; 
            return false; 
        } 
    } 

[forminator_quiz id="1934"]

This article tried to discuss Breadth First Search, Disjoint Set. Hope this blog helps you understand and solve the problem. To practice more problems on Breadth First Search, Disjoint Set you can check out MYCODE | Competitive Programming.

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