问题
I need to Find the solution of the recurrence for n, a power of two if T(n)=3T(n/2)+n
for n>1 and T(n)=1 otherwise.
using substitution of n=2^m,S(m)=T(2^(m-1))
I can get down to:
S(m)=2^m+3*2^(m-1)+3^2*2^(m-2)+⋯+3^(m-1) 2^1+3^m
But I have no idea how to simply that.
回答1:
These types of recurrences are most easily solved by Master Theorem for analysis of algorithms which is explained as follows:
Let a be an integer greater than or equal to 1, b be a real number greater than 1, and c be a positive real number. Given a recurrence of the form -
T (n) = a * T(n/b) + nc where n > 1, then for n a power of b, if
- Logba < c, T (n) = Θ(nc);
- Logba = c, T (n) = Θ(nc * Log n);
- Logba > c, T (n) = Θ(nlogba).
English translation of your recurrence
The most critical thing to understand in Master Theorem is the constants a, b, and c mentioned in the recurrence. Let's take your own recurrence - T(n) = 3T(n/2) + n - for example.
This recurrence is actually saying that the algorithm represented by it is such that,
(Time to solve a problem of size n) = (Time taken to solve 3 problems of size n/2) + n
The n at the end is the cost of merging the results of those 3 n/2 sized problems.
Now, intuitively you can understand that:
- if the cost of "solving 3 problems of size n/2" has more weight than "n" then the first item will determine the overall complexity;
- if the cost "n" has more weight than "solving 3 problems of size n/2" then the second item will determine the overall complexity; and,
- if both parts are of same weight then solving the sub-problems and merging their results will have an overall compounded weight.
From the above three intuitive understanding, only the three cases of Master Theorem arise.
In your example, a = 3, b = 2 and c = 1. So it falls in case-3 as Logba = Log23 which is greater than 1 (the value of c).
The complexity therefore is straightforward - Θ(nlogba) = Θ(nlog23).
回答2:
You can solve this using Masters theorem, but also by opening the recursion tree in the following way:
- At the root of the recursion tree, you will have a work of n.
- In the second stage, the tree splits into three parts, and in each part, the work will be n / 2.
- Keep going until you reach the leaves. The entire work leaf will be: O (1) = O (n / 2 ^ k) when: n = 2 ^ k.
- Note that at each step m have 3 ^ m splits.
- Now we'll combine all the steps together, using the geometric progression and logarithms rules. In the end, you will get: T(n) = 3T(n/2)+n = 2n^(log3)-2n the calculation
回答3:
Have a look here at page 60 http://www.cs.columbia.edu/~cs4205/files/CM2.pdf.
And maybe you should have asked here https://math.stackexchange.com/
回答4:
The problems like this can be solved using Masters theorem.
In your case a = 3
, b = 2
and f(n) = n
.
So c = logb(a) = log2(3)
, which is bigger than 1 and therefore you fall into the first case. So your complexity is:
来源:https://stackoverflow.com/questions/18817646/solving-a-recurrence-tn-3tn-2n