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Suppose that I have two computational complexities :

  1. O(k * M(n)) - computational complexity of modular exponentiation, where k is number of exponent bits , n is number of digits , and M(n) is computational complexity of the Newton's division algorithm.

  2. O(log^6(n)) - computational complexity of an algorithm.

How can I determine which one of these two complexities is less "expensive" ? In fact notation M(n) is that what confusing me most .

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Isn't that, according to how Wikipedia defines modular exponentation, it's complexity is simply O(n) -- to calculate a^n(mod c) we have to do n mults + 1 division? Additionally, your O(k * M(n)) seems to be concerned with bit complexity, whereas 2nd complexity is not bit complexity. –  Victor Sorokin Nov 30 '11 at 8:55
    
@VictorSorokin,complexity of arithmetic operations –  pedja Nov 30 '11 at 8:58
    
Okay, so M(n) is time to multiply 2 n-bit numbers, as defined in linked arXiv article (arxiv.org/pdf/1004.2091v2). Is O(n) good enough estimation for this? –  Victor Sorokin Nov 30 '11 at 9:04
    
@VictorSorokin,I don't know... –  pedja Nov 30 '11 at 9:10
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Are you interested in the theoretical complexity or the actual usability? Big-O notation only describes the asymptotic behavior, i.e. as n goes to infinity. Things may very well be reversed for small n. –  mitchus Dec 1 '11 at 16:29
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2 Answers

Okay, according to this Wikipedia entry about application of Newton method to division , you have to do O(lg(n)) steps to calculate n bits of division. Every step employs multiplication and subtraction, so has bit complexity O(n^2) in case we employ simple "schoolbook" method.

So, complexity of first approach is O(lg(n) * n^2). It's asymptotically slower than second approach.

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If I understand you correctly you are saying that O(k*M(n)) is more "expensive" than O(log^6(n)) ? –  pedja Nov 30 '11 at 9:34
    
Yes, if I'm right. –  Victor Sorokin Nov 30 '11 at 9:39
    
,What if we choose some other method instead of "schoolbook" method ? –  pedja Nov 30 '11 at 9:42
    
Then you would have result complexity O(lg(n) * X), where X is complexity of that method (from your Wikipedia link). But, as far as I know, all other multiplication methods are rather complex to implement in practice. –  Victor Sorokin Nov 30 '11 at 9:49
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@VictorSorocin,As far as I know O(n^3) is known as polynomial complexity, and O(log(n)*n^2) is asymptotically faster... –  pedja Nov 30 '11 at 10:23
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First, for any given fixed n, just put it in the runtime function (sans the Landau O, mind you) and compare.

Asymptotically, you can divide one function (resp its Landau term) by the other and consider the quotient's limit for n to infinity. If it is zero, the function in the nominator grows properly, asymptotically weaker than the other. If it is infinity, it grows properly faster. In all other cases, the have the same asymptotic grows up to a constant factor (i.e. big Theta). If the quotient is 1 in the limit, they are asymptotically equal.

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