I know how to do recurrence relations for algorithms that only call itself once, but I'm not sure how to do something that calls itself multiple times in one occurrence.

For example:

T(n) = T(n/2) + T(n/4) + T(n/8) + (n)

Thanks!

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should go to the cstheory one - how do you recommend a question for migration anyway? – Claudiu Apr 11 '11 at 22:26
What do you mean by "do recurrence relations"? – Robin Green Apr 11 '11 at 22:27
@Claudiu - you would flag it, but I doubt this is a research-level comp sci question – Robin Green Apr 11 '11 at 22:27
@Robin Something like this – Jack Apr 11 '11 at 22:31
This is not a CS theory question but simple problem in practical complexity analysis – antti.huima Apr 12 '11 at 1:45
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3 Answers

Many of these can be solved by Akra-Bazzi.

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Use Recursion Tree. See the last example of Recursion tree at CLRS "Intro to Algorithm".

T(n) = T(n/2) + T(n/4) + T(n/8) + n. The root will be n(cost) & divided into 3 recursions. So the recursion tree looks like as follows:

T(n) = n = n T(n/2)T(n/4)T(n/8) (n/2) (n/4) (n/8) T(n/4)T(n/8)T(n/16) T(n/8)T(n/16)T(n/32) T(n/16)T(n/32)T(n/64)

= ... =
n---------------------------------> n

                             (n/2)         (n/4)           (n/8)--------------> (7/8)n

                         n/4 n/8 n/16  n/8 n/16 n/32  n/16 n/32 n/64)--------> (49/64)n
                                            ...         

Longest path: the leftmost left branch = n -> n/2 -> n/4 -> ... -> 1

Shortest branch: the rightmost right branch = n -> n/8 -> n->64 -> ... -> 1

The number of leaves (l): 3^log_8(n) < l < 3^log_2(n) => n^0.5 < l < n^1.585

Look at the tree - upto log_8(n) levels the tree is full, and then as we go down, more & more internal nodes are absent. By this theory we can give the bound,

T(n) = Big-Oh (Summation j=0 to log_2(n)-1 (7/8)^j n) = ... => T(n) = O(n). T(n) = Big-Omega (Summation j=0 to log_8(n)-1 (7/8)^j n) = ... => T(n) = Big-Omega(n).

Therefore, T(n) = Theta(n).

Here the points are: T(n/2) path has the highest length...

This must not be a complete ternary tree ... height = log base 2 of n & # of leaves must be less than n ...

Hope, likely this way u can solve the prob.

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Just like coding the Fibonacci Sequence (the hard way) as an example, you would simply type something along the lines of:

long fib(long n){
 if(n <= 1) return n; 
 else return fib(n-1) + fib(n-2);
}     

Or, better yet, memoize it using a global variable to make it much quicker. Once again, with the Fibonacci Sequence:

static ArrayList<Long>fib_global = new ArrayList(1000); 
  //delcare a global variable that can be appended to
long fib(long n){
   if(n >= fib_global.length)fib_global.add(fib(n-1) + fib(n-2));
   return fib_global.get(n);
}

The code will only execute one of these calls at a time, and most likely in the left-to-right order you typed them in, making it so that you only don't really need to worry about the amount of times you needed to call something.

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