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I have been reading about Quicksort and found that sometimes it' s referred to as "Deterministic Quicksort".

Is this an alternate version of the normal Quicksort ? What is the difference between a normal Quicksort and a Deterministic Quicksort ?

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7 Answers 7

up vote 10 down vote accepted

The ordinary ("deterministic") Quicksort can have very poor behaviour on particular datasets (as an example, an implementation that picks the first unsorted element has O(n^2) time complexity on already-sorted data).

Randomized Quicksort (which selects a random pivot, rather than choosing deterministically) is sometimes used to give better expected performance over all datasets.

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What's the difference between the deterministic and randomized versions of Quicksort ? –  Andreas Grech Feb 22 '10 at 20:34
Deterministic quicksort chooses the pivot deterministically (say, always the first unsorted element, or the element halfway through). Randomized quicksort chooses a random unsorted element as the pivot. –  Anon. Feb 22 '10 at 20:35
The choice of pivot element. Randomized quicksort chooses a random index in the array for a pivot; deterministic always chooses a particular index (i.e. l"eftmost"). –  Billy ONeal Feb 22 '10 at 20:36
@Anon: your last comment answers my question more than your initial answer does. –  Andreas Grech Feb 22 '10 at 20:37
-1: The response doesn't answer the question. The comment explains it, though. I'll change to +1 if you edit your response to answer the question. –  Platinum Azure Feb 22 '10 at 20:37

Quicksort runs in O(n log n) expected/average time, but O(n^2) worst case. This occurs if the pivot chosen is consistently either the minimum or the maximum.

Ideally, you want to select the median as your pivot. If finding the median directly is too costly (usually this is the case if you're trying to use quicksort), what's commonly done instead is to either take the median of three potential pivot elements, or else just pick a random element as your pivot.

The latter method renders quicksort nondeterministic because of the randomness inherent to the pivot selection process.

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Also, I feel it's worth mentioning that contrary to what you ask in the question, deterministic quicksort tends to be the "normal" quicksort, at least with regard to what's taught in classes, because it's easiest. The random pivot is usually a decision made at implementation time in the hope of improving the algorithm's overall performance. –  Platinum Azure Feb 22 '10 at 20:42

In general, a sort algorithm is "deterministic" if it consistently sorts the elements in the exact same order every time. Given a set of records to sort on id (asc):

  1 Censu
  11 Marju
  4  Cikku
  11 Lonzu

then a sorting algorithm could return both Censu, Cikk, Marju, Lonzu, or Censu, Cikku, Lonzu, Marju, as correct sortings. A deterministic sort is one which always returns the same ordering. This needn't always be the case. In the case of quicksort, one can get faster average performance if pivots are chosen randomly (ideally you would choose the median, but this can be costly). However, this comes at a cost: your search is no longer deterministic.

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you beat me to it! –  Bruno Brant Feb 22 '10 at 20:49
Il-Bhima! hah gotta love those very, Very Maltese names... –  Andreas Grech Feb 22 '10 at 20:52
I think you're thinking of "stable" sorts. –  Martin Feb 22 '10 at 20:53
@Martin: A stable sort is deterministic but the converse is not true. For a sort to be stable, equally valued entries must maintain the order they were originally given. Deterministic sorts needn't, but the returned order must always be the same. –  Il-Bhima Feb 22 '10 at 21:50
@Il-Bhima: I never said anything to the contrary. Stability refers to entries with equal comparison keys. My issue is that you seemed to conflate "deterministic" with stable; these are not the same thing. –  Platinum Azure Feb 22 '10 at 22:45

Your source can (and should) give its own definition, but generally a deterministic quicksort is one where the pivot is chosen through a formula that doesn't depend on random numbers. For example, always pick the middle element or always the first, or something like this. This means that its performance will always be the same (in theory anyway, although in practice the difference shouldn't be too big) no matter how many times you run it on the same input. A randomised quicksort means that you are using random numbers when choosing the pivot, meaning the performance cannot be (easily) predicted for different runs on the same input.

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It has to do with the partitioning (or the divide step from the famed Divide and Conquer which is used in Quick sort). If every time the last (or first element or element at any position, just that it has to be the same position every time the data set is divided) is used as the pivot to partition then it is Deterministic Quick sort. If the pivot is picked at random then it is Randomized quick sort.

Here is a lecture note which puts it across.

I hope it helps


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Common adjectives in front of quicksort are deterministic and randomized. Deterministic means that the quicksort will always sort the same set of data in the same fashion while a randomized quicksort uses randomization and will rarely sort the same data in the same exact fashion (unless the data set is very small - then it is more common).


It comes down to how the pivots are chosen. In a deterministic quicksort, the pivots are chosen by either always choosing the pivot at the same relative index such as the first, last, or middle element or by using the median of any number of predetermined element choices. For instance, a common method is to choose the median of first, last, and middle elements as the pivot. Even with the median-of-3 method I just described, certain datasets can easily give O(N^2) time complexity. An example dataset is the so-called organ pipes set of data:

array = [1,2,3,4,5,6,7,8,9,10,9,8,7,6,5,4,3,2,1]


Randomizated quicksorts can choose just a random pivot or use the median of some number of randomly chosen pivots. There is still the possibility of O(N^2) time complexity, but the probability is much, much smaller and becomes smaller with increasing dataset size.

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Besides what many others have already told you about how a deterministic quick sort is implemented and a non-deterministic one is, I believe one, much more important aspect of such sort, is that, with deterministic quicksort, you always have the same order of records when keys clash, while with non-deterministic quicksorts, the order of such records can be different each time you run the sort.

I guess you should not use non-deterministic quicksorting when you have non-unique keys.

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But quicksort is not stable anyway by default, and making it stable and fast is not a trivial task, so does it really matter? –  IVlad Feb 22 '10 at 20:56
@|\/|ad: Not sure I followed... There are many ways of making it stable but that means, of course, more computational power (time) involved... however, when the partitions are chosen deterministically, the resulting set is always in the same order...isn't it? (I'm beginnig to doubt my own answer) –  Bruno Brant Feb 23 '10 at 17:34

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