04-树4. Root of AVL Tree-平衡查找树AVL树的实现

2023-03-13,,

  对于一棵普通的二叉查找树而言,在进行多次的插入或删除后,容易让树失去平衡,导致树的深度不是O(logN),而接近O(N),这样将大大减少对树的查找效率。一种解决办法就是要有一个称为平衡的附加的结构条件:任何节点的深度均不得过深。有一种最古老的平衡查找树,即AVL树。

  AVL树是带有平衡条件的二叉查找树。平衡条件是每个节点的左子树和右子树的高度最多差1的二叉查找树(空树的高度定义为-1)。相比于普通的二叉树,AVL树的节点需要增加一个变量保存节点高度。AVL树的节点声明如下:

typedef struct TreeNode *AvlTree;
typedef struct TreeNode *Position;
struct TreeNode
{
int Data;
AvlTree Left;
AvlTree Right;
int Height; //保存节点高度
};

  只有一个节点的树显然是AVL树,之后我们向其插入节点。然而在插入过程中可能破坏AVL树的特性,因此我们需要对树进行简单的修正,即AVL树的旋转。

  设a节点在插入下一个节点后会失去平衡,这种插入可能出现四种情况:

  1. 对a的左儿子的左子树进行一次插入。(左-左)

  2. 对a的左儿子的右子树进行一次插入。(左-右)

  3. 对a的右儿子的左子树进行一次插入。(右-左)

  4. 对a的右儿子的右子树进行一次插入。(右-右)

  情形1和4,情形2和3分别是关于A节点的镜像对称,故在理论上是两种情况,而编程具体实现还是需要考虑四种。

  单旋转--情形1和4:

  双旋转--情形2和3:

  情形2和3就是向上图中的子树Y插入一个节点,由上图可知,无论是左单旋还是右单旋都无法改变子树Y的高度。解决办法是再将子树Y分解成根节点和相应的左子树和右子树,然后对相应的节点做相应的旋转,如下图:

  下面一个题即是考察AVL树的旋转:题目来源:http://www.patest.cn/contests/mooc-ds/04-%E6%A0%914

An AVL tree is a self-balancing binary search tree. In an AVL tree, the heights of the two child subtrees of any node differ by at most one; if at any time they differ by more than one, rebalancing is done to restore this property. Figures 1-4 illustrate the rotation rules.

    

    

Now given a sequence of insertions, you are supposed to tell the root of the resulting AVL tree.

Input Specification:

Each input file contains one test case. For each case, the first line contains a positive integer N (<=20) which is the total number of keys to be inserted. Then N distinct integer keys are given in the next line. All the numbers in a line are separated by a space.

Output Specification:

For each test case, print ythe root of the resulting AVL tree in one line.

Sample Input 1:

5
88 70 61 96 120

Sample Output 1:

70

Sample Input 2:

7
88 70 61 96 120 90 65

Sample Output 2:

88

题目大意是先输入一个整数N,然后依次输入N个节点的值,以此建立AVL树,最后输出AVL树的根节点的值。

代码如下:

#include <cstdio>
#include <cstdlib> typedef struct TreeNode *AvlTree;
typedef struct TreeNode *Position;
struct TreeNode
{
int Data;
AvlTree Left;
AvlTree Right;
int Height;
}; AvlTree Insert(int x, AvlTree T); //插入新节点,必要时调整
Position SingleRotateWithLeft(Position a); //左单旋
Position SingleRotateWithRight(Position b); //右单旋
Position DoubleRotateWithLeft(Position a); //左右旋
Position DoubleRotateWithRight(Position b); //右左旋 int Max(int x1, int x2); //返回两个int中较大的
int Height(Position P); //返回一个节点的高度 int main()
{
int n, x;
AvlTree T = NULL; scanf("%d", &n);
for (int i = ; i < n; i++)
{
scanf("%d", &x);
T = Insert(x, T);
}
printf("%d\n", T->Data); //打印根节点的值 return ;
} AvlTree Insert(int x, AvlTree T)
{
if (T == NULL)
{
T = (AvlTree)malloc(sizeof(struct TreeNode));
T->Data = x;
T->Left = T->Right = NULL;
T->Height = ;
}
else if (x < T->Data) //向左子树插入
{
T->Left = Insert(x, T->Left);
if (Height(T->Left) - Height(T->Right) == ) //需调整
{
if (x < T->Left->Data)
T = SingleRotateWithLeft(T);
else
T = DoubleRotateWithLeft(T);
}
}
else if (x > T->Data) //向右子树插入
{
T->Right = Insert(x, T->Right);
if (Height(T->Right) - Height(T->Left) == ) //需调整
{
if (x > T->Right->Data)
T = SingleRotateWithRight(T);
else
T = DoubleRotateWithRight(T);
}
}
/*else值为x的节点已经存在树中,无需插入*/ /*更新节点高度*/
T->Height = Max(Height(T->Left), Height(T->Right)) + ;
return T;
} Position SingleRotateWithLeft(Position a)
{
Position b = a->Left;
a->Left = b->Right;
b->Right = a;
//更新a, b节点高度
a->Height = Max(Height(a->Left), Height(a->Right)) + ;
b->Height = Max(Height(b->Left), Height(b->Right)) + ; return b; /*新的根节点*/
} Position SingleRotateWithRight(Position b)
{
Position a = b->Right;
b->Right = a->Left;
a->Left = b;
//更新a,b节点高度
a->Height = Max(Height(a->Left), Height(a->Right)) + ;
b->Height = Max(Height(b->Left), Height(b->Right)) + ;
return a; /*新的根节点*/
} Position DoubleRotateWithLeft(Position a)
{
a->Left = SingleRotateWithRight(a->Left);
return SingleRotateWithLeft(a);
} Position DoubleRotateWithRight(Position b)
{
b->Right = SingleRotateWithLeft(b->Right);
return SingleRotateWithRight(b);
} int Max(int x1, int x2)
{
return (x1 > x2) ? x1 : x2;
} int Height(Position P)
{
if (P == NULL) //空节点高度为-1
return -;
return P->Height;
}

  需要注意的细节是我们需要快速得到一个节点(包括空节点)的高度,所以我们需要些一个函数来处理空节点(空指针)的情况,而不是简单的Position->Height。

  

04-树4. Root of AVL Tree-平衡查找树AVL树的实现的相关教程结束。

《04-树4. Root of AVL Tree-平衡查找树AVL树的实现.doc》

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