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Why might quick sort be better than merge sort ?

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    @ qrdl: There are a lot more properties to sorting algorithms than speed. Mar 25, 2009 at 7:50
  • On a processor with 16 registers, like a PC in 64 bit mode, a 4 way merge sort can be as fast or a bit faster than a standard quick sort for cases like sorting an array of pseudo random integers. A 4 way merge sort does the same total number of operations as 2 way, but it.s 1.5 x compares, 0.5 x moves, and the compares are a bit more cache friendly than the moves. To be fair, since using a 4 way merge sort is an optimization, then a dual pivot quick sort should be a bit faster. Most computers have giga-bytes of ram, so merge sort space overhead is usually not an issue.
    – rcgldr
    Apr 22, 2016 at 2:50

11 Answers 11

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See Quicksort on wikipedia:

Typically, quicksort is significantly faster in practice than other Θ(nlogn) algorithms, because its inner loop can be efficiently implemented on most architectures, and in most real-world data, it is possible to make design choices which minimize the probability of requiring quadratic time.

Note that the very low memory requirement is a big plus as well.

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    +1. This is a good reason for using quicksort. Mar 25, 2009 at 7:40
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    If the quicksort is initialized up front with a random 64-bit number N, and the pivot for every section is at index N mod SectionSize, then the probability of the algorithm demonstrating any complexity C where C is worse than O(n log n) exponentially decreases as the input size grows. Oct 13, 2009 at 2:35
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    39% more compares in Quick sort than Merge sort but number of swaps in Quick sort are lesser than Merge sort. Swap operation is costlier on CPU than compare operation, as mentioned here. Testing on home laptop Quick sort takes 0.6 sec to sort millon items unlike merge sort taking 1 sec where as insertion sort takes 2.8 hours. Dec 31, 2016 at 5:38
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Quick sort is typically faster than merge sort when the data is stored in memory. However, when the data set is huge and is stored on external devices such as a hard drive, merge sort is the clear winner in terms of speed. It minimizes the expensive reads of the external drive and also lends itself well to parallel computing.

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    Quick sort lends itself to parallel computing basically as well as merge sort. Quick sort is top down where as merge sort is bottom up, which I was about to say is irrelevant to parallelization, but now that I think about it I actually think Quick sort is a little better for parallelization. I'm thinking the top down approach is better for work stealing in the fork join framework which comes into play on hyper modern CPUs like Intel Alder Lake and the latest smartphone chips which have asymmetric cores. May 29, 2022 at 23:59
  • I'm also not sure merge sort is better for cache locality either. For one thing disk to RAM is the same thing in principle as RAM to cache so you would expect to see the same phenomenon in both places. Furthermore again the fundamental difference between quick sort and merge sort is that one is top down where as the other is bottom up which makes no difference in terms of overall locality of reference or even being able to fit all of something somewhere. Merge sort can be broken up into small pieces at the beginning where as quick sort can do it at the end. Why does the timing of that matter? May 30, 2022 at 0:08
  • As I understand it Quick Sort is faster because it has (slightly) better locality of reference by virtue of the fact that it can be executed within a single array where as an efficient implementation of Merge Sort will alternate back and forth between two arrays. This of course also saves memory and a memory allocation/de-allocation. May 30, 2022 at 0:15
  • Okay upon further thought I retract the portion of my statement on parallelization in which I said that Quick Sort is a little computationally superior to Merge Sort in the context of work stealing. You can implement the fork join framework in an equally effective manner for both. However I am confident that employing fork join on Quick Sort is a little simpler. May 30, 2022 at 1:28
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For Merge sort worst case is O(n*log(n)), for Quick sort: O(n2). For other cases (avg, best) both have O(n*log(n)). However Quick sort is space constant where Merge sort depends on the structure you're sorting.

See this comparison.

You can also see it visually.

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    That is wrong. An acceptable implementation of quicksort sorts smallest subrange first. Dec 13, 2009 at 21:59
  • Very good comparison article indeed. Both explanation and simple implementations.
    – extraneon
    Apr 8, 2010 at 8:05
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    @Stephan Eggermont: You're right -- quicksort uses at least O(log n) and at most O(n) extra space, since every split (recursion) requires constant space to store the pivot location and there must be at least log2(n) of them. I must have got confused and put the extra factor of n in by mistake. Oct 30, 2010 at 7:00
  • Merge sort can be implemented with two arrays of size n (regardless of the contents of the array you're sorting) with the algorithm switching back and forth between the two at each level of the recursion. May 30, 2022 at 1:37
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While quicksort is often a better choice than merge sort, there are definitely times when merge sort is thereotically a better choice. The most obvious time is when it's extremely important that your algorithm run faster than O(n^2). Quicksort is usually faster than this, but given the theoretical worst possible input, it could run in O(n^2), which is worse than the worst possible merge sort.

Quicksort is also more complicated than mergesort, especially if you want to write a really solid implementation, and so if you're aiming for simplicity and maintainability, merge sort becomes a promising alternative with very little performance loss.

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    Where mergesort shines is when you need either a stable sort (elements that compare equal are not rearranged) or when you are using sequential (rather than random-access) "memory" (e.g. you can mergesort efficiently using tape drives). Mar 26, 2009 at 8:00
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    @j_random_hacker: your tape drive example is a bit obscure; more common examples might be sorting data as it is received from a network connection, or sorting data structures which don't allow efficient random access like linked lists
    – Christoph
    Oct 29, 2010 at 7:46
  • You never answered the question. May 30, 2022 at 1:42
  • An efficient version of Quick Sort is actually a little bit simpler than an efficient version of Merge Sort because efficient versions of Merge Sort alternate back and forth between two arrays of size n to avoid excessive memory allocations and de-allocations which are expensive. So they have to keep track of indices just like Quick Sort and on top of that they have to have logic for alternating between the two arrays. Perhaps you're referring to something like Intro Sort which switches from Quick Sort to Heap Sort if the recursion depth on Quick Sort exceeds log(n). May 30, 2022 at 1:49
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I personally wanted to test the difference between Quick sort and merge sort myself and saw the running times for a sample of 1,000,000 elements.

Quick sort was able to do it in 156 milliseconds whereas Merge sort did the same in 247 milliseconds

The Quick sort data, however, was random and quick sort performs well if the data is random where as its not the case with merge sort i.e. merge sort performs the same, irrespective of whether data is sorted or not. But merge sort requires one full extra space and quick sort does not as its an in-place sort

I have written comprehensive working program for them will illustrative pictures too.

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  • Weird. I also made a Java program to sort a million elements for both quicksort and mergesort. My quicksort executed around the same time as yours but my mergesort executes in like 12 minutes.. any reason why? can you look at my code?
    – compski
    Nov 3, 2013 at 14:30
  • @compski: can you point me to your code ?
    – bragboy
    Nov 6, 2013 at 12:38
  • pastebin.com/sYs4u6Kd
    – compski
    Nov 6, 2013 at 16:49
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    @compski: i see a problem in line 14 in your code. instead of using ONE extra array space, you are creating innumerous arrays which will kill the memory. here is the example which uses only ONE extra array (see line 24). tech.bragboy.com/2010/01/merge-sort-in-java.html let me know this answered your problem. if not i can help you more.
    – bragboy
    Oct 25, 2016 at 11:21
  • You never answered the question. May 30, 2022 at 1:58
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Quicksort is in place. You just need to swap positions of data during the Partitioning function. Mergesort requires a lot more data copying. You need another temporary storage (typically the same size as your original data array) for the Merge function.

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In addition to the others: Merge sort is very efficient for immutable datastructures like linked lists and is therefore a good choice for (purely) functional programming languages.

A poorly implemented quicksort can be a security risk.

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    the issue with linked lists is not mutability, but lack of efficient random access, ie you're stuck with on-line algorithms (merge sort, insertion sort)
    – Christoph
    Oct 29, 2010 at 7:41
  • @Christoph: Quicksort doesn't require random access; linked lists can be quicksorted efficiently. When you look at how quicksort works, it effectively grows several "lists" from defined starting points within an array. (Heapsort OTOH does require O(1) random access.) Jul 15, 2012 at 4:36
  • @j_random_hacker: without random access, Quicksort suffers from poor choice of pivot
    – Christoph
    Jul 15, 2012 at 8:51
  • @Christoph: That crossed my mind too, but I think the only pivot-choosing strategy it would affect would be the (admittedly common) median-of-3 variant in which the 3 are taken from the beginning, middle and end. Even doing an O(n) scan to find these 3 elements won't alter the O(n) time complexity of the partitioning step: it should cause an overall slowdown of <2x. And even this could be removed by having the "parent" recursive call determine these 3 values for each partition as it builds them up (for the midpoint element, update a pointer every 2 iters). Jul 15, 2012 at 12:35
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    @j_random_hacker: any code reference (preferably C or C++)? I'd like to see how well this works out in practice...
    – Christoph
    Jul 15, 2012 at 20:25
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The answer would slightly tilt towards quicksort w.r.t to changes brought with DualPivotQuickSort for primitive values . It is used in JAVA 7 to sort in java.util.Arrays

It is proved that for the Dual-Pivot Quicksort the average number of
comparisons is 2*n*ln(n), the average number of swaps is 0.8*n*ln(n),
whereas classical Quicksort algorithm has 2*n*ln(n) and 1*n*ln(n)
respectively. Full mathematical proof see in attached proof.txt
and proof_add.txt files. Theoretical results are also confirmed
by experimental counting of the operations.

You can find the JAVA7 implmentation here - http://grepcode.com/file/repository.grepcode.com/java/root/jdk/openjdk/7-b147/java/util/Arrays.java

Further Awesome Reading on DualPivotQuickSort - http://permalink.gmane.org/gmane.comp.java.openjdk.core-libs.devel/2628

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It is not true that quicksort is better. ALso, it depends on what you mean better, memory consumption, or speed.

In terms of memory consumption, in worst case, but quicksort can use n^2 memory (i.e. each partition is 1 to n-1), whereas merge sort uses nlogn.

The above follows in terms of speed.

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  • Quicksort, in the worst case will use only O(n) memory. Yes, the time complexity can be O(n^2) in worst case. To understand, look at the max size of recursion stack. That is equal to the maximum number of levels in the DFS tree. Even if each partition is 1,n-1, the number of levels would be n (n, n-1, n-2, n-3 ... 1).
    – mlfan
    Mar 2, 2017 at 6:21
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quicksort is named so for a reason ,

highlights : both are stable sorts,(simply an implementation nuisance ) , so lets just move on to complexities

its very confusing with just the big-oh notations being spilled and "abused" , both have average case complexity of 0(nlogn) ,

but merge sort is always 0(nlogn) , whereas quicksort for bad partitions, ie skewed partitions like 1 element-10 element (which can happen due to sorted or reverse sorted list ) can lead to a 0(n^2)..

.. and so we have randomized quicksort , where we pick the pivot randomly and avoid such skewed partitioning , thereby nullifying the whole n^2 scenario anyway even for moderately skewed partitioning like 3-4 , we have a nlog(7/4)n, ideally we want 1-1 partion , thus the whole 2 of O(nlog(2)n).

so it is O(nlogn) , almost always and unlike merge sort the constants hidden under the "big-oh" notation are better for quicksort than for mergesort ..and it doesnt use up extra space like merge sort.

but getting quicksort run perfectly requires tweaking ,rephrase , quicksort provides you opportunities to tweak ....

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  • quick sort can be made stable , check this post. I hope that helps
    – idexi
    Aug 5, 2014 at 12:15
  • The statement "unlike merge sort the constants hidden under the 'big-oh' notation are better for quicksort than for mergesort" doesn't qualify as an answer, and more importantly it isn't even true. Merge Sort will always have fewer comparisons than Quick Sort. Where does this constant number of comparisons you speak of come from? It doesn't exist in either case. Quick Sort has slightly better locality of reference by virtue of the fact that it's inline where as (an efficient implementation of) Merge Sort alternates back and forth between two arrays, and it saves a memory allocation. May 30, 2022 at 2:15
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Quicksort is in place. You need very little extra memory. Which is extremely important.

Good choice of median makes it even more efficient but even a bad choice of median quarantees Theta(nlogn).

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    But quicksort requires random access to all the data which might not be ideal for very large data sets Oct 13, 2009 at 2:12

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