# balancing an AVL tree (C++)

I'm having the hardest time trying to figure out how to balance an AVL tree for my class. I've got it inserting with this:

``````Node* Tree::insert(int d)
{
cout << "base insert\t" << d << endl;
else
}

Node* Tree::insert(Node*& current, int d)
{
cout << "insert\t" << d << endl;
if (current == NULL)
current = new Node(d);
else if (d < current->data) {
insert(current->lchild, d);
if (height(current->lchild) - height(current->rchild)) {
if (d < current->lchild->getData())
rotateLeftOnce(current);
else
rotateLeftTwice(current);
}
}
else if (d > current->getData()) {
insert(current->rchild, d);
if (height(current->rchild) - height(current->lchild)) {
if (d > current->rchild->getData())
rotateRightOnce(current);
else
rotateRightTwice(current);
}
}

return current;
}
``````

My plan was to have the calls to balance() check to see if the tree needs balancing and then balance as needed. The trouble is, I can't even figure out how to traverse the tree to find the correct unbalanced node. I know how to traverse the tree recursively, but I can't seem to translate that algorithm into finding the lowest unbalanced node. I'm also having trouble writing an iterative algorithm. Any help would be appreciated. :)

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By the way, if you are familiar with java, `for me` the book Data Structures and Algorithms in Java, by Lafore helped me a lot to understand data structures. Although it does not have AVL it does talk extensively about Red-Black trees, which `i` if find easier. Once you understand them in Java you can do it in any other language you are familiar with, the whole point is understanding the way they work –  Carlos Nov 18 '10 at 22:32
@Carlos: I agree that as long as the language is not cryptic (perl ...) any will do to demonstrate the implementation of an algorithm or data-structure. –  Matthieu M. Nov 19 '10 at 7:48

You can measure the `height` of a branch at a given point to calculate the unbalance

(remember a difference in height (levels) >= 2 means your tree is not balanced)

``````int Tree::Height(TreeNode *node){
int left, right;

if(node==NULL)
return 0;
left = Height(node->left);
right = Height(node->right);
if(left > right)
return left+1;
else
return right+1;
}
``````

Depending on the unevenness then you can rotate as necessary

``````void Tree::rotateLeftOnce(TreeNode*& node){
TreeNode *otherNode;

otherNode = node->left;
node->left = otherNode->right;
otherNode->right = node;
node = otherNode;
}

void Tree::rotateLeftTwice(TreeNode*& node){
rotateRightOnce(node->left);
rotateLeftOnce(node);
}

void Tree::rotateRightOnce(TreeNode*& node){
TreeNode *otherNode;

otherNode = node->right;
node->right = otherNode->left;
otherNode->left = node;
node = otherNode;
}

void Tree::rotateRightTwice(TreeNode*& node){
rotateLeftOnce(node->right);
rotateRightOnce(node);
}
``````

Now that we know how to rotate, lets say you want to insert a value in the tree... First we check whether the tree is empty or not

``````TreeNode* Tree::insert(int d){
if(isEmpty()){
return (root = new TreeNode(d));  //Is empty when root = null
}
else
return insert(root, d);           //step-into the tree and place "d"
}
``````

When the tree is not empty we use recursion to traverse the tree and get to where is needed

``````TreeNode* Tree::insert(TreeNode*& node, int d_IN){
if(node == NULL)  // (1) If we are at the end of the tree place the value
node = new TreeNode(d_IN);
else if(d_IN < node->d_stored){  //(2) otherwise go left if smaller
insert(node->left, d_IN);
if(Height(node->left) - Height(node->right) == 2){
if(d_IN < node->left->d_stored)
rotateLeftOnce(node);
else
rotateLeftTwice(node);
}
}
else if(d_IN > node->d_stored){ // (3) otherwise go right if bigger
insert(node->right, d_IN);
if(Height(node->right) - Height(node->left) == 2){
if(d_IN > node->right->d_stored)
rotateRightOnce(node);
else
rotateRightTwice(node);
}
}
return node;
}
``````

You should always check for balance (and do rotations if necessary) when modifying the tree, no point waiting until the end when the tree is a mess to balance it. That just complicates things...

UPDATE

There is a mistake in your implementation, in the code below you are not checking correctly whether the tree is unbalanced. You need to check whether the height is equals to 2 (therefore unbalance). As a result the code bellow...

``````if (height(current->lchild) - height(current->rchild)) { ...

if (height(current->rchild) - height(current->lchild)) {...
``````

Should become...

``````if (height(current->lchild) - height(current->rchild) == 2) { ...

if (height(current->rchild) - height(current->lchild) == 2) {...
``````

Some Resources

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Thanks for the detailed comment. It is very helpful. However, I don't think I understand your insert method. What is the purpose the the first parameter? In the code I show above, I start at the head and loop until I find the correct location for the tree. Is that a bad method of doing this? It seems with your insert method, you already know before hand where the node belongs. –  greggory.hz Nov 18 '10 at 23:14
see the edit hopefully it will help. Looping is not the best choice, use recursion instead, as it is easier to manipulate the nodes of the tree. –  Carlos Nov 18 '10 at 23:43
So when I run this code, I get a seg fault at node = new TreeNode(d_IN); in the second insert method, what might cause that? –  greggory.hz Nov 19 '10 at 0:24
update your question for a moment with your implementation to check –  Carlos Nov 19 '10 at 0:28
@Carlos I just don't understand the part where you are doing this: Code: "if (d_IN > node->right->d){rotateRightOnce} else{rotateRightTwice}". can you explain it a bit. It would be much of a favor. –  Terrenium Mar 2 '13 at 18:25

Wait, wait, wait. You aren't really going to check the "height" of every branch each time you're inserting something, are you?

Measuring the height means transversing all the sub-branch. Means - every insert into such a tree will cost O(N). If so - what do you need such a tree? You may use a sorted array as well: it gives O(N) insertion/deletion and O(log N) search.

A correct AVL handling algorithm must store the left/right height difference at each node. Then, after every operation (insert/remove) - you must make sure none of the affected nodes will be too much unbalanced. To do this you do the so-called "rotations". During them you don't actually re-measure the heights. You just don't have to: every rotation changes the balance of the affected nodes by some predictable value.

-

goto http://code.google.com/p/self-balancing-avl-tree/ , all usual operations like add, delete are implemented, plus concat and split

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Commented out is the code right rotate above and left rotate, below is my working right rotate and my working left rotate. I think the logic in the rotate above is inversed:

`````` void rotateRight(Node *& n){
//Node* temp = n->right;
//n->right = temp->left;
//temp->left = n;
//n = temp;
cout << "}}}}}}}}}}}}}}}}}}}}}ROTATE RIGHT}}}}}}}}}}}}}}}}}}}}}" << endl;
Node *temp = n->left;
n->left = temp->right;
temp->right = n;
n = temp;
}

void rotateLeft(Node *& n){
//Node *temp = n->left;
//n->left = temp->right;
//temp->right = n;
//n = temp;
cout << "}}}}}}}}}}}}}}}}}}}}}ROTATE LEFT}}}}}}}}}}}}}}}}}}}}}" << endl;
Node* temp = n->right;
n->right = temp->left;
temp->left = n;
n = temp;
}
``````
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