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What is a plain English explanation of Theta notation? With as little formal definition as possible and simple mathematics.

How theta notation is different from the Big O notation ? Could anyone explain in plain English?

In algorithm analysis how there are used? I am confused?

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As funny as it sounds, the answers for Plain English explanation of Big O actually describe big-Theta – amit Sep 8 '12 at 17:20
this is not big o ,this is the theta notation ... which can be sandwiched between two functions. – kTiwari Sep 8 '12 at 17:22
Also: Your first question (difference between big O and big Theta) is covered in the thread: Difference between Big-Theta and Big O notation in simple language – amit Sep 8 '12 at 18:32

2 Answers 2

up vote 2 down vote accepted

If an algorithm's run time is Big Theta(f(n)), it is asymptotically bounded above and below by f(n). Big O is the same except that the bound is only above.

Intuitively, Big O(f(n)) says "we can be sure that, ignoring constant factors and terms, the run time never exceeds f(n)." In rough words, if you think of run time as "bad", then Big O is a worst case. Big Theta(f(n)) says "we can be sure that, ignoring constant factors and terms, the run time always varies as f(n)." In other words, Big Theta is a known tight bound: it's both worst case and best case.

A final try at intuition: Big O is "one-sided." O(n) run time is also O(n^2) and O(2^n). This is not true with Big Theta. If you have an algorithm run time that's O(n), then you already have a proof that it's not Big Theta(n^2). It may or may not be Big Theta(n)

An example is comparison sorting. Information theory tells us sorting requires at least ceiling(n log n) comparisons, and we have actually invented O(n log n) algorithms (where n is number of comparisons), so sorting comparisons are Big Theta(n log n).

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Plain English answer would have accepted – kTiwari Sep 8 '12 at 17:46
Man, if you're going to do computer science, you have to learn the words and math of computer science. There is no way around it. – Gene Sep 8 '12 at 17:48
Just for clearing some semantic issues: Note that an algorithm is not Big Theta nor big O of anything. O(f(n)) and Theta(f(n)) are sets of functions. The complexity (under some specific analysis) of an algorithm (which is a function) could be O(f(n)) or Theta(f(n)). Also, sorting is not Theta(nlogn). QuickSort average case (or merge sort worst case) are Theta(nlogn). (Bubble sort on the other hand has a worst case complexity of Theta(n^2), even though it is a sorting algorithm). – amit Sep 8 '12 at 18:26
@amit: i am totally confused ,sometimes certain author have taken big O for worst case ,and some author have taken big theta for worst case for the different algo. – kTiwari Sep 8 '12 at 18:52
@krishnaChandra: Big O and Big Theta can both be applied to worst case,average case, best case, or any other case you can think of. It is a used to bound the function, and not the algorithm. The worst case (for example) is producing a funciton (which is different from the average case usually), and each notation can be applied on any case. – amit Sep 8 '12 at 18:56

I have always wanted to put this down in Simple words. Here is my try.

If an algorithm's time or space complexity is expressed in

  • Big O : Ex O(n) - means n is the upper limit. Final Value could be less than or equal to n.

  • Big Omega : Ex Ω(n) - means n is the lower limit. Final Value could be equal to or more than n.

  • Theta : Ex Θ(n) - means n is the only possible value. (both upper limit & lower limit)

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Beware that this answer is wrong. 2n is in Θ(n). – amit Apr 28 '14 at 15:49

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