# sorting a doubly linked list with merge sort

Hi I have found this code in the internet and it was for arrays ,I want to change it for doubly linked list(instead of index we should use pointer) would you please help me that how can i change merge method(I have changed sort method by myself) also this is not my home work ,I love working with linked list!!

``````public class MergeSort {

}

public void sort() {

return;
}
for (int x = 0; x < (LocalDoublyLinkedList.size() / 2); x++) {
}
for (int x = (LocalDoublyLinkedList.size() / 2) + 1; x < LocalDoublyLinkedList.size`(); x++) {`
}
MergeSort sort1 = new MergeSort(listOne);
MergeSort sort2 = new MergeSort(listTwo);
sort1.sort();
sort2.sort();

merge(listOne, listTwo);
}

int x = 0;
int y = 0;
int z = 0;
while (x < first.length && y < second.length) {
if (first[x] < second[y]) {
a[z] = first[x];
x++;
} else {
a[z] = second[y];
y++;
}
z++;
}
//copy remaining elements to the tail of a[];
for (int i = x; i < first.length; i++) {
a[z] = first[i];
z++;
}
for (int i = y; i < second.length; i++) {
a[z] = second[i];
z++;
}
}
}
``````
-

Merge sort requires splitting the list quite often. Isn't iterating to the middle of a LinkedList pretty much the most expensive operation you can perform on it (well, short of sorting it)? I could see the merge step working pretty well (you're iterating forwards over two linked lists), but I'm not sure that this implementation is worth the trouble without an O(1) split operation.

### Followup

As pointed out to me, the O(n) split operation doesn't really add much to complexity when you're already doing O(n) things during the merge phase. Nevertheless, you're still going to run into trouble doing iteration like you're doing (not using an `Iterator` but instead using `get` on a `List` with poor random-access characteristics).

I was bored while debugging some other issue so wrote you what I consider to be a decent Java implementation of this algorithm. I followed Wikipedia's pseudocode verbatim and sprinkled in some generics and print statements. If you have any questions or concerns, just ask.

``````import java.util.List;

/**
* This class implements the mergesort operation, trying to stay
* as close as possible to the implementation described on the
* Wikipedia page for the algorithm. It is meant to work well
* even on lists with non-constant random-access performance (i.e.
* LinkedList), but assumes that {@code size()} and {@code get(0)}
* are both constant-time.
*
* @author jasonmp85
* @see <a href="http://en.wikipedia.org/wiki/Merge_sort">Merge sort</a>
*/
public class MergeSort {
/**
* Keeps track of the call depth for printing purposes
*/
private static int depth = 0;

/**
* Creates a list of 10 random Longs and sorts it
*
* Prints out the original list and the result.
*
*/
public static void main(String[] args) {

for(int i = 0; i < 10; i++) {
}

System.out.println("ORIGINAL LIST\n" +
"=================\n" +
list + "\n");

List<Long> sorted = sort(list);

System.out.println("\nFINAL LIST\n" +
"=================\n" +
sorted + "\n");
}

/**
* Performs a merge sort of the items in {@code list} and returns a
* new List.
*
* Does not make any calls to {@code List.get()} or {@code List.set()}.
*
* Prints out the steps, indented based on call depth.
*
* @param list the list to sort
*/
public static <T extends Comparable<T>> List<T> sort(List<T> list) {
depth++;
String tabs = getTabs();

System.out.println(tabs + "Sorting: " + list);

if(list.size() <= 1) {
depth--;
return list;
}

int middle = list.size() / 2;

for(T item: list) {
else
}

left = sort(left);
right = sort(right);

result = merge(left, right);

System.out.println(tabs + "Sorted to: " + result);

depth--;
return result;
}

/**
* Performs the oh-so-important merge step. Merges {@code left}
* and {@code right} into a new list, which is returned.
*
* @param left the left list
* @param right the right list
* @return a sorted version of the two lists' items
*/
private static <T extends Comparable<T>> List<T> merge(List<T> left,
List<T> right) {
String tabs = getTabs();
System.out.println(tabs + "Merging: " + left + " & " + right);

while(left.size() > 0 && right.size() > 0) {
if(left.get(0).compareTo(right.get(0)) < 0)
else
}

if(left.size() > 0)
else

return result;
}

/**
* Returns a number of tabs based on the current call depth.
*
*/
private static String getTabs() {
StringBuffer sb = new StringBuffer("");
for(int i = 0; i < depth; i++)
sb.append('\t');
return sb.toString();
}
}
``````

### To Run

1. Save the code to a file named MergeSort.java
2. Run `javac MergeSort.java`
3. Run `java MergeSort`
4. Marvel
5. Optionally, run `javadoc -private MergeSort.java` to create the documentation. Open the index.html file it creates.
-
The split operation is expensive indeed, but note that the overall complexity is still optimal. The recurrence relation is T(N) = 2T(N/2)+1.5N, and it can be shown easily that T(N) = O(N log N) –  Eyal Schneider May 30 '10 at 12:17

It depends on what `DoublyLinkedList` is - is it a concrete user-defined type, or just an alias name for a linked list type?

In the first case, you should have indexed get/set methods and/or an iterator defined in it, which make the task simple.

In the latter case, why not use the standard `java.util.LinkedList`?

In terms of the `List` interface, the operation could be implemented like this:

``````<T> List<T> merge(List<T> first, List<T> second, List<T> merged) {
if (first.isEmpty())
else if (second.isEmpty())
else {
Iterator<T> firstIter = first.iterator();
Iterator<T> secondIter = second.iterator();
T firstElem = firstIter.next();
T secondElem = secondIter.next();

do {
if (firstElem < secondElem) {
firstElem = firstIter.hasNext() ? firstIter.next() : null;
} else {
secondElem = secondIter.hasNext() ? secondIter.next() : null;
}
} while (firstIter.hasNext() && secondIter.hasNext());
//copy remaining elements to the tail of merged
if (firstElem != null)
if (secondElem != null)
while (firstIter.hasNext()) {
}
while (secondIter.hasNext()) {
}
}
}
``````

This implementation is a bit more tedious than it would be with arrays, mostly since iterators are "consumed" by the `next` operation, so one must keep account of the current item in each list. With `get`, the code would be simpler, quite similar to the array solution, however it would be way slower for big lists, as @sepp2k pointed out.

A couple more notes:

• the Java tradition is to use lowercase variable names, hence `localDoublyLinkedList`
• Java has no pointers, only references.
-
Mentioning indexed get/set methods without also mentioning that they're O(n) for linked lists seems a bit dangerous to me. You should definitely not use get and set when writing a sorting algorithm. –  sepp2k May 30 '10 at 12:09

First of all, you must NOT use indexes when dealing with linked lists. Do it like this:

``````while (i < in.size/2){
i++
}
while(!in.isEmptly){
}
``````

And for merging

``````merge(a, b, out){
while(!a.empty && !b.empty){
if(a.first() >= b.first())
else

//remember to take care of the remaining elements
while(!a.empty)
while(!b.empty)
}
``````

This way it will still be O(n log n)

-

I came across this problem yesterday. Here are some thoughts.

Sorting a `DoublyLinkedList` is different from sorting an `Array` as you can not make index based references to any arbitrary item in the List. Instead you need to remember the items during each recursive step and then pass them on to the merge function. For each recursion step you only need to remember the first item of each list half. If you do not remember these items you will quickly end up with indexes, but this leads you to the problem that in your `merge`-function you need to traverse the whole list with `for`-loops to find the items to merge. That in turn means you get a complexity of `O(n^2)`.

Another important point is the step of recursing into the list and dividing the list in two halves. You can do this step in the recursive part by using `for`-loops. Contrary to the `merge`-part at this step the `for`-loops will only yield a complexity of `O(log(n) * n/2)` and this is still below the overall `O(n*log(n))` complexity. Here is why:

1. You always need to find the first item of each half of list part.

2. In the first recursion step you need to pass the `first` item and the item at position `n/2`. This takes `n/2` steps to find.

3. In each following step you need to find the middle item for each of the two halves of the list which gives us `n/4` to find the item in the first halve and `n/4` in the other halve. In total thats `n/2`.

4. In each following recursive step the amount of list parts double and the lengths is divided by two:

• `4 * n/8` in the 3rd recursion depth

• `8 * n/16` in the 4th recursion depth, and so on...

5. The recursion depth is `log(n)` and in each step we perform `n/2` steps. This equals `O(log(n)*n/2)`

Finally here is some code:

``````public DoublyLinkedList mergesort(DoublyLinkedList in, int numOfElements) {
in.first = mergesort(in.first, numOfElements);
return in;
}
``````

mergeSort:

``````public ListElement mergesort(ListElement first, int length) {
if(length > 1) {
ListElement second = first;
for(int i=0; i<length/2; i++) {
second = second.next;
}
first = mergesort(first, length/2);
second = mergesort(second, (length+1)/2);
return merge(first, second, length);
} else {
return first;
}
}
``````

and merge:

``````public ListElement merge(ListElement first, ListElement second, int length) {
ListElement result = first.prev; //remember the beginning of the new list will begin after its merged
int right = 0;
for(int i=0; i<length; i++) {
if(first.getKey() <= second.getKey()) {
if(first.next == second) break; //end of first list and all items in the second list are already sorted, thus break
first = first.next;
} else {
if(right==(length+1)/2)
break; //we have merged all elements of the right list into the first list, thus break
if(second == result) result = result.prev; //special case that we are mergin the last element then the result element moves one step back.
ListElement nextSecond = second.next;
//remove second
second.prev.next = second.next;
second.next.prev = second.prev;
//insert second behind first.prev
second.prev = first.prev;
first.prev.next = second;
//insert second before first
second.next = first;
first.prev = second;
//move on to the next item in the second list
second = nextSecond;
right++;
}
}
return result.next; //return the beginning of the merged list
}
``````

The maximum amount of memory used is also pretty low (not including the list itself). Correct me if I'm wrong but it should be less than 400 bytes (on 32bit). It would be 12 byte per call on mergeSort times the recursion depth of log(n) plus 20 bytes for the variables of merge thus: 12*log(n)+20 bytes.

P.S. Code tested on 1 million items (takes 1200ms). Also `DoublyLinkedList` is a container that stores the first `ListElement` of the list.

Update: I have answered a similar question about Quicksort using the same data structures, however in comparison to this Mergesort implementation it runs much slower. Here are some updated timings for reference:

Mergesort:

``````1.000.000 Items:  466ms
8.300.000 Items: 5144ms
``````
``````1.000.000 Items:  696ms
8.300.000 Items: 8131ms
``````

Note the timings are specific to my hardware and you might get different results.

-

Another idea is to create an array with all the elements of the list, sort the array and then insert the elements to the list again.

Pro: very simple to implement, faster if poor implementation of list mergesort (maybe also faster than good implementations)

Contra: uses some extra space (O(n))

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