I am wondering what the particular applications of binary trees are. Could you give some real examples?
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Even though the bounty is gone, since the accepted answer gives the extremelyfalse impression that binarytrees are not very useful, I will post another answer. To squabble about the performance of binarytrees is meaningless  they are not a data structure, but a family of data structures, all with different performance characteristics. While it is true that unbalanced binary trees perform much worse than selfbalancing binary trees for searching, there are many binary trees (such as binary tries) for which "balancing" has no meaning. Applications of binary trees
The reason that binary trees are used more often than nary trees for searching is that nary trees are more complex, but usually provide no real speed advantage. In a (balanced) binary tree with In contrast, an nary tree will require (However, nary trees are still useful in nichesituations. The examples that come immediately to mind are quadtrees and other spacepartitioning trees, where divisioning space using only two nodes per level would make the logic unnecessarily complex; and Btrees used in many databases, where the limiting factor is not how many comparisons are done at each level but how many nodes can be loaded from the harddrive at once) 


When most people talk about binary trees, they're more often than not thinking about binary search trees, so I'll cover that first. A nonbalanced binary search tree is actually useful for little more than educating students about data structures. That's because, unless the data is coming in in a relatively random order, the tree can easily degenerate into its worstcase form, which is a linked list, since simple binary trees are not balanced. A good case in point: I once had to fix some software which loaded its data into a binary tree for manipulation and searching. It wrote the data out in sorted form:
so that, when reading it back in, ended up with the following tree:
which is the degenerate form. If you go looking for Frank in that tree, you'll have to search all six nodes before you find him. Binary trees become truly useful when you balance them. This involves rotating subtrees through their root node so that the height difference between any two subtrees is less than or equal to 1. Adding those names above one at a time into a balanced tree would give you the following sequence:
You can actually see whole subtrees rotating to the left as the entries are added and this gives you a balanced binary tree in which the worst case lookup is O(log N) rather than O(N) as the degenerate form gives. At no point does the highest NULL ( Of course, they become even more useful when you make them balanced multiway trees rather than binary tress. That means that each node holds more than one item (technically, they hold N items and N+1 pointers, a binary tree being a special case of a 1way multiway tree with 1 item and 2 pointers). With a threeway tree, you end up with:
This is typically used in maintaining keys for an index of items. I've written database software optimised for the hardware where a node is exactly the size of a disk block (say, 512 bytes) and you put as many keys as you can into a single node. The pointers in this case were actually record numbers into a fixedlengthrecord directaccess file separate from the index file (so record number For example, if the pointers are 4 bytes and the key size is 10, the number of keys in a 512byte node is 36. That's 36 keys (360 bytes) and 37 pointers (148 bytes) for a total of 508 bytes with 4 bytes wasted per node. The use of multiway keys introduces the complexity of a twophase search (multiway search to find the correct node combined with a small sequential search to find the correct key in the node) but the advantage in doing less disk I/O more than makes up for this. I see no reason to do this for an inmemory structure, you'd be better off sticking with a balanced binary tree and keeping your code simple. Also keep in mind that the advantages of O(log N) over O(N) don't really appear when your data sets are small. If you're using a multiway tree to store the fifteen people in your address book, it's probably overkill. The advantages come when you're storing something like every order from your hundred thousand customers over the last ten years. The whole point of bigO notation is to indicate what happens as the N approaches infinity. Some people may disagree but it's even okay to use bubble sort if you're sure the data sets will stay below a certain size, as long as nothing else is readily available :) As to other uses for binary trees, there are a great many, such as:
Given how much explanation I generated for the search trees, I'm reticent to go into a lot of detail on the others, but that should be enough to research them, should you desire. 


A binary tree is a tree data structure in which each node has at most two child nodes, usually distinguished as "left" and "right". Nodes with children are parent nodes, and child nodes may contain references to their parents. Outside the tree, there is often a reference to the "root" node (the ancestor of all nodes), if it exists. Any node in the data structure can be reached by starting at root node and repeatedly following references to either the left or right child. In a binary tree a degree of every node is maximum two. Binary trees are useful, because as you can see in the picture, if you want to find any node in the tree, you only have to look a maximum of 6 times. If you wanted to search for node 24, for example, you would start at the root.
This search is illustrated below: You can see that you can exclude half of the nodes of the entire tree on the first pass. and half of the left subtree on the second. This makes for very effective searches. If this was done on 4 billion elements, you would only have to search a maximum of 32 times. Therefore, the more elements contained in the tree, the more efficient your search can be. Deletions can become complex. If the node has 0 or 1 child, then it's simply a matter of moving some pointers to exclude the one to be deleted. However, you can not easily delete a node with 2 children. So we take a short cut. Let's say we wanted to delete node 19. Since trying to determine where to move the left and right pointers to is not easy, we find one to substitute it with. We go to the left subtree, and go as far right as we can go. This gives us the next greatest value of the node we want to delete. Now we copy all of 18's contents, except for the left and right pointers, and delete the original 18 node. To create these images, I implemented an AVL tree, a self balancing tree, so that at any point in time, the tree has at most one level of difference between the leaf nodes (nodes with no children). This keeps the tree from becoming skewed and maintains the maximum Here is a sample showing how my AVL tree has kept itself as compact and balanced as possible. In a sorted array, lookups would still take Example code for an AVL tree can be found at http://ideone.com/MheW8 


The organization of Morse code is a binary tree. 





The main application is binary search trees. These are a data structure in which searching, insertion, and removal are all very fast (about 


One of the most common application is to efficiently store data in sorted form in order to access and search stored elements quickly. For instance, Binary tree as data structure is useful for various implementations of expression parsers and expression solvers. It may also be used to solve some of database problems, for example, indexing. Generally, binary tree is a general concept of particular treebased data structure and various specific types of binary trees can be constructed with different properties. 


One interesting example of a binary tree that hasn't been mentioned is that of a recursively evaluated mathematical expression. It's basically useless from a practical standpoint, but it is an interesting way to think of such expressions. Basically each node of the tree has a value that is either inherent to itself or is evaluated by recursively by operating on the values of its children. For example, the expression
To evaluate the expression, we ask for the value of the parent. This node in turn gets its values from its children, a plus operator and a node that simply contains '2'. The plus operator in turn gets its values from children with values '1' and '3' and adds them, returning 4 to the multiplication node which returns 8. This use of a binary tree is akin to reverse polish notation in a sense, in that the order in which operations are performed is identical. Also one thing to note is that it doesn't necessarily have to be a binary tree, it's just that most commonly used operators are binary. At its most basic level, the binary tree here is in fact just a very simple purely functional programming language. 


In C++ STL, and many other standard libraries in other languages, like Java and C#. Binary search trees are used to implement set and map. 


I dont think there is any use for "pure" binary trees. (except for educational purposes) Balanced binary trees, such as RedBlack trees or AVL trees are much more useful, because they guarantee O(logn) operations. Normal binary trees may end up being a list (or almost list) and are not really useful in applications using much data. Balanced trees are often used for implementing maps or sets. They can also be used for sorting in O(nlogn), even tho there exist better ways to do it. Also for searching/inserting/deleting Hash tables can be used, which usually have better performance than binary search trees (balanced or not). An application where (balanced) binary search trees would be useful would be if searching/inserting/deleting and sorting would be needed. Sort could be inplace (almost, ignoring the stack space needed for the recursion), given a ready build balanced tree. It still would be O(nlogn) but with a smaller constant factor and no extra space needed (except for the new array, assuming the data has to be put into an array). Hash tables on the other hand can not be sorted (at least not directly). Maybe they are also useful in some sophisticated algorithms for doing something, but tbh nothing comes to my mind. If i find more i will edit my post. Other trees like f.e. B+trees are widely used in databases 


They can be used as a quick way to sort data. Insert data into a binary search tree at O(log(n)). Then traverse the tree in order to sort them. 


One of the most important application of binary trees are balanced binary search trees like: These type of trees have the property that the difference in heights of left subtree and right subtree is maintained small by doing operations like rotations each time a node is inserted or deleted. Due to this, the overall height of the tree remains of the order of log n and the operations such as search, insertion and deletion of the nodes are performed in O(log n) time. The STL of C++ also implements these trees in the form of sets and maps. 


Applications of Binary tree: 


A compiler who uses a binary tree for a representation of a AST, can use known algorithms for parsing the tree like postorder,inorder.The programmer does not need to come up with it's own algorithm. Because a binary tree for a source file is higher than the nary tree,it's building takes more time. Take this production: selstmnt := "if" "(" expr ")" stmnt "ELSE" stmnt In a binary tree it will have 3levels of nodes, but the nary tree will have 1 level(of chids) That's why Unix based OSs are slow. 


your programs syntax, or for that matter many other things such as natural languages can be parsed using binary tree (though not necessarily). 


Implementations of 


On modern hardware, a binary tree is nearly always suboptimal due to bad cache and space behaviour. This also goes for the (semi)balanced variants. If you find them, it is where performance doesn't count (or is dominated by the compare function), or more likely for historic or ignorance reasons. 

