冒泡排序是一种简单的比较排序算法,它多次遍历数组,将较大的元素逐渐浮动到数组的末尾。
public static void BubbleSort(int[] arr){ int n = arr.Length; for (int i = 0; i < n - 1; i++) { for (int j = 0; j < n - i - 1; j++) { if (arr[j] > arr[j + 1]) { int temp = arr[j]; arr[j] = arr[j + 1]; arr[j + 1] = temp; } } }}
快速排序是一种高效的分治排序算法,它通过选择一个基准元素并将数组分为较小和较大的两部分来进行排序。
public static void QuickSort(int[] arr, int low, int high){ if (low < high) { int partitionIndex = Partition(arr, low, high); QuickSort(arr, low, partitionIndex - 1); QuickSort(arr, partitionIndex + 1, high); }}public static int Partition(int[] arr, int low, int high){ int pivot = arr[high]; int i = low - 1; for (int j = low; j < high; j++) { if (arr[j] < pivot) { i++; int temp = arr[i]; arr[i] = arr[j]; arr[j] = temp; } } int swap = arr[i + 1]; arr[i + 1] = arr[high]; arr[high] = swap; return i + 1;}
合并排序是一种稳定的分治排序算法,它将数组分成两半,分别排序后再合并。
public static void MergeSort(int[] arr){ int n = arr.Length; if (n > 1) { int mid = n / 2; int[] left = new int[mid]; int[] right = new int[n - mid]; for (int i = 0; i < mid; i++) left[i] = arr[i]; for (int i = mid; i < n; i++) right[i - mid] = arr[i]; MergeSort(left); MergeSort(right); int i = 0, j = 0, k = 0; while (i < mid && j < (n - mid)) { if (left[i] < right[j]) arr[k++] = left[i++]; else arr[k++] = right[j++]; } while (i < mid) arr[k++] = left[i++]; while (j < (n - mid)) arr[k++] = right[j++]; }}
二分查找是一种高效的查找算法,它要求在有序数组中查找特定元素。
public static int BinarySearch(int[] arr, int target){ int low = 0, high = arr.Length - 1; while (low <= high) { int mid = (low + high) / 2; if (arr[mid] == target) return mid; else if (arr[mid] < target) low = mid + 1; else high = mid - 1; } return -1;}
DFS 是一种图遍历算法,它从起始节点开始,沿着路径尽可能深入,然后返回并继续搜索。
using System;using System.Collections.Generic;public class Graph{ private int V; private List<int>[] adj; public Graph(int v) { V = v; adj = new List<int>[v]; for (int i = 0; i < v; i++) adj[i] = new List<int>(); } public void AddEdge(int v, int w) { adj[v].Add(w); } public void DFS(int v) { bool[] visited = new bool[V]; DFSUtil(v, visited); } private void DFSUtil(int v, bool[] visited) { visited[v] = true; Console.Write(v + " "); foreach (var n in adj[v]) { if (!visited[n]) DFSUtil(n, visited); } }}
BFS 是一种图遍历算法,它从起始节点开始,逐层遍历,先访问所有相邻的节点,然后再逐层扩展。
using System;using System.Collections.Generic;public class Graph{ private int V; private List<int>[] adj; public Graph(int v) { V = v; adj = new List<int>[v]; for (int i = 0; i < v; i++) adj[i] = new List<int>(); } public void AddEdge(int v, int w) { adj[v].Add(w); } public void BFS(int s) { bool[] visited = new bool[V]; Queue<int> queue = new Queue<int>(); visited[s] = true; queue.Enqueue(s); while (queue.Count != 0) { s = queue.Dequeue(); Console.Write(s + " "); foreach (var n in adj[s]) { if (!visited[n]) { visited[n] = true; queue.Enqueue(n); } } } }}
Dijkstra算法是一种用于查找图中最短路径的算法。
public class Dijkstra{ private static int V = 9; private int MinDistance(int[] dist, bool[] sptSet) { int min = int.MaxValue; int minIndex = 0; for (int v = 0; v < V; v++) { if (!sptSet[v] && dist[v] <= min) { min = dist[v]; minIndex = v; } } return minIndex; } private void PrintSolution(int[] dist) { Console.WriteLine("Vertex /t Distance from Source"); for (int i = 0; i < V; i++) { Console.WriteLine(i + " /t " + dist[i]); } } public void FindShortestPath(int[,] graph, int src) { int[] dist = new int[V]; bool[] sptSet = new bool[V]; for (int i = 0; i < V; i++) { dist[i] = int.MaxValue; sptSet[i] = false; } dist[src] = 0; for (int count = 0; count < V - 1; count++) { int u = MinDistance(dist, sptSet); sptSet[u] = true; for (int v = 0; v < V; v++) { if (!sptSet[v] && graph[u, v] != 0 && dist[u] != int.MaxValue && dist[u] + graph[u, v] < dist[v]) { dist[v] = dist[u] + graph[u, v]; } } } PrintSolution(dist); }}
Prim算法用于找到图的最小生成树,它从一个初始顶点开始,逐渐扩展生成树。
public class PrimMST{ private static int V = 5; private int MinKey(int[] key, bool[] mstSet) { int min = int.MaxValue; int minIndex = 0; for (int v = 0; v < V; v++) { if (!mstSet[v] && key[v] < min) { min = key[v]; minIndex = v; } } return minIndex; } private void PrintMST(int[] parent, int[,] graph) { Console.WriteLine("Edge /t Weight"); for (int i = 1; i < V; i++) { Console.WriteLine(parent[i] + " - " + i + " /t " + graph[i, parent[i]]); } } public void FindMST(int[,] graph) { int[] parent = new int[V]; int[] key = new int[V]; bool[] mstSet = new bool[V]; for (int i = 0; i < V; i++) { key[i] = int.MaxValue; mstSet[i] = false; } key[0] = 0; parent[0] = -1; for (int count = 0; count < V - 1; count++) { int u = MinKey(key, mstSet); mstSet[u] = true; for (int v = 0; v < V; v++) { if (graph[u, v] != 0 && !mstSet[v] && graph[u, v] < key[v]) { parent[v] = u; key[v] = graph[u, v]; } } } PrintMST(parent, graph); }}
Kruskal算法也用于找到图的最小生成树,它基于边的权重排序。
using System;using System.Collections.Generic;public class Graph{ private int V, E; private List<Edge> edges; public Graph(int v, int e) { V = v; E = e; edges = new List<Edge>(e); } public void AddEdge(int src, int dest, int weight) { edges.Add(new Edge(src, dest, weight)); } public void KruskalMST() { edges.Sort(); int[] parent = new int[V]; int[] rank = new int[V]; for (int i = 0; i < V; i++) { parent[i] = i; rank[i] = 0; } int i = 0; int e = 0; List<Edge> mst = new List<Edge>(); while (e < V - 1) { Edge nextEdge = edges[i++]; int x = Find(parent, nextEdge.src); int y = Find(parent, nextEdge.dest); if (x != y) { mst.Add(nextEdge); Union(parent, rank, x, y); e++; } } Console.WriteLine("Edges in Minimum Spanning Tree:"); foreach (var edge in mst) { Console.WriteLine($"{edge.src} - {edge.dest} with weight {edge.weight}"); } } private int Find(int[] parent, int i) { if (parent[i] == i) return i; return Find(parent, parent[i]); } private void Union(int[] parent, int[] rank, int x, int y) { int xRoot = Find(parent, x); int yRoot = Find(parent, y); if (rank[xRoot] < rank[yRoot]) parent[xRoot] = yRoot; else if (rank[xRoot] > rank[yRoot]) parent[yRoot] = xRoot; else { parent[yRoot] = xRoot; rank[xRoot]++; } }}public class Edge : IComparable<Edge>{ public int src, dest, weight; public Edge(int src, int dest, int weight) { this.src = src; this.dest = dest; this.weight = weight; } public int CompareTo(Edge other) { return weight - other.weight; }}
下面是C#中的Floyd-Warshall算法的实现示例:
using System;class FloydWarshall{ private static int INF = int.MaxValue; // 代表无穷大的值 public static void FindShortestPath(int[,] graph) { int V = graph.GetLength(0); // 创建一个二维数组dist,用于保存最短路径的长度 int[,] dist = new int[V, V]; // 初始化dist数组 for (int i = 0; i < V; i++) { for (int j = 0; j < V; j++) { dist[i, j] = graph[i, j]; } } // 逐个顶点考虑,如果经过k顶点路径比原路径短,就更新dist数组 for (int k = 0; k < V; k++) { for (int i = 0; i < V; i++) { for (int j = 0; j < V; j++) { if (dist[i, k] != INF && dist[k, j] != INF && dist[i, k] + dist[k, j] < dist[i, j]) { dist[i, j] = dist[i, k] + dist[k, j]; } } } } // 输出最短路径矩阵 Console.WriteLine("最短路径矩阵:"); for (int i = 0; i < V; i++) { for (int j = 0; j < V; j++) { if (dist[i, j] == INF) Console.Write("INF/t"); else Console.Write(dist[i, j] + "/t"); } Console.WriteLine(); } } static void Main(string[] args) { int V = 4; // 顶点数 int[,] graph = { {0, 5, INF, 10}, {INF, 0, 3, INF}, {INF, INF, 0, 1}, {INF, INF, INF, 0} }; FindShortestPath(graph); }}
在这个示例中,我们使用Floyd-Warshall算法来计算给定图的最短路径矩阵。该算法通过考虑逐个中间顶点k,不断更新最短路径矩阵dist。最终,我们可以获得所有点对之间的最短路径长度。
本文链接:http://www.28at.com/showinfo-26-63225-0.html程序开发中常用的十种算法,你用过几种?
声明:本网页内容旨在传播知识,若有侵权等问题请及时与本网联系,我们将在第一时间删除处理。邮件:2376512515@qq.com