# Solving a recurrence relation with √n as parameter

Consider the recurrence

$\qquad\displaystyle T(n) = \sqrt{n} \cdot T\bigl(\sqrt{n}\bigr) + c\,n$

for $n \gt 2$ with some positive constant $c$, and $T(2) = 1$.

I know the Master theorem for solving recurrences, but I'm not sure as to how we could solve this relation using it. How do you approach the square root parameter?

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• The Master theorem is not applicable here; $\sqrt{n}$ can not be written as $\frac{n}{b}$. What else have you tried? – Raphael Oct 31 '12 at 23:18
• @Raphael : I tried the substiution method, but seemed to get stuck on what value I should choose to substitute. – seeker Oct 31 '12 at 23:27
• How about "unfold the recurrence a few times, observe a pattern, guess the solution and prove it"? – Raphael Oct 31 '12 at 23:40
• Well this is a first ive come across of this type, maybe some help here would help me work out future problems of the nature with ease. – seeker Nov 1 '12 at 0:08
• Since you mention Master Theorem, I assume you need to solve this relation for asymptotic bounds, and don't really need the closed form expression. Given below, there are some good solutions to find the closed form expression, which also give the asymptotic complexity. However, if you only need the asymptotic complexity, the analysis is simpler. Have a look here for a good explanation on finding asymptotic complexities, with a nice intuitive solution for your problem instance. – Paresh Nov 3 '12 at 13:33

We will use Raphael's suggestion and unfold the recurrence. In the following, all logarithms are base 2. We get

\begin{align*} T(n) &= n^{1/2} T(n^{1/2}) + cn \\ &= n^{3/4} T(n^{1/4}) + n^{1/2} c n^{1/2} + cn\\ &= n^{7/8} T(n^{1/8}) + n^{3/4} c n^{1/4} + 2cn\\ &= n^{15/16} T(n^{1/16}) + n^{7/8} c n^{1/8} + 3cn \\ & \ldots \\ &= \frac{n}{2} T(2) + c n \beta(n) \end{align*}. where $\beta(n)$ is how many times you have to take the square root to start with n, and reach 2. It turns out that $\beta(n) = \log \log n$. How can you see that? Consider: \begin{align*} n &= 2^{\log n}\\ n^{1/2} &= 2^{\frac{1}{2} \log n} \\ n^{1/4} &= 2^{\frac{1}{4} \log n} \\ \ldots \end{align*} So the number of times you need to take the square root in order to reach 2 is the solution to $\frac{1}{2^t} \log n \approx 1$, which is $\log \log n$. So the solution to the recursion is $c n \log \log n + \frac{1}{2}n$. To make this absolutely rigorous, we should use the substitution method and be very careful about how things get rounded off. When I have time, I will try to add this calculation to my answer.

• "You have to take the square root $\log\log n$ times" -- is that something a beginner can be expected to see? Also, your result does not fit Yuval's; is it intended to by asymptotically only? – Raphael Nov 1 '12 at 14:12
• @Raphael: Yuval made an error, which he's now corrected. I'll explain the square root in my answer. – Peter Shor Nov 1 '12 at 14:44
• Another idea to see that the recursion takes $O(\log\log n)$ is the following: By taking the square root of $n$ you halve the digits needed for the binary representation of $n$. So your input needs $w=\log n$ bits and you divide the word-size by 2 for every level of the recursion. Hence you stop after $\log w=\log\log n$ steps. – A.Schulz Nov 1 '12 at 17:59

In your comment you mentioned that you tried substitution but got stuck. Here's a derivation that works. The motivation is that we'd like to get rid of the $\sqrt{n}$ multiplier on the right hand side, leaving us with something that looks like $U(n) = U(\sqrt{n}) + something$. In this case, things work out very nicely:

\begin{align} T(n) &= \sqrt{n}\ T(\sqrt{n}) + n & \text{so, dividing by n we get}\\ \frac{T(n)}{n} &= \frac{T(\sqrt{n})}{\sqrt{n}} + 1 &\text{and letting n = 2^m we have}\\ \frac{T(2^m)}{2^m} &= \frac{T(2^{m/2})}{2^{m/2}} + 1 \end{align} Now let's simplify things even further, by changing to logs (since $\lg \sqrt{n} = (1/2)\lg{n}$). Let \begin{align} S(m) &= \frac{T(2^m)}{2^m} & \text{so our original recurrence becomes}\\ S(m) &= S(m/2)+1 \end{align} Aha! This is a well-known recurrence with solution $$S(m)=\Theta(\lg m)$$ Returning to $T(\,)$, we then have, with $n=2^m$ (and so $m=\lg n$), $$\frac{T(n)}{n} = \Theta(\lg\,\lg n)$$ So $T(n) =\Theta(n\,\lg\,\lg n)$.

If you write $m=\log n \space$ you have $T(m) = {m \over 2}\cdot T({m\over 2}) + c\cdot 2^m\space$.

Now you know the recursion tree has hight of order $O(\log m)$, and again it's not hard to see it's $O(2^m)\space$ in each level, so total running time is in: $O((\log m) \cdot 2^m)\space$, which concludes $O(n \cdot \log \log n)\space$ for $n$.

In all when you see $\sqrt n$ or $n^{a \over b}, a<b \space$, is good to check logarithm.

P.S: Sure proof should include more details by I skipped them.

Let's follow Raphael's suggestion, for $n = 2^{2^k}$: \begin{align*} T(n) = T(2^{2^k}) &= 2^{2^{k-1}} T(2^{2^{k-1}}) + c2^{2^k} \\ &= 2^{2^{k-1}+2^{k-2}} T(2^{2^{k-2}}) + c(2^{2^k} + 2^{2^k}) \\ &= \cdots \\ &= 2^{2^{k-1}+2^{k-2}+\cdots+2^0} T(2^{2^0}) + c(2^{2^k} + 2^{2^k} + \cdots + 2^{2^k}) \\ &= 2^{2^k-1} + ck2^{2^k} \\ &= (c\log\log n + 1/2)n. \end{align*}

Edit: Thanks Peter Shor for the correction!

• How did you come up with $2^{2^k}$? Note for OP: "$\dots$" is not a proof, you'll have to provide that still (usually by induction). – Raphael Nov 1 '12 at 14:11
• @Raphael: It's nearly a proof. You just need to show that it's also correct for numbers not of the form $2^{2^k}$. – Peter Shor Nov 1 '12 at 14:59
• Actually, the recurrence is only well-defined for numbers of the form $2^{2^k}$, since otherwise, at some point $\sqrt{n}$ wouldn't be an integer, and you'll never reach the base case $T(2)$. – Yuval Filmus Nov 1 '12 at 18:18
• If this recurrence actually came from an algorithm, it would probably really be something more like $T(n) = \lceil \sqrt{n} \rceil T(\lceil \sqrt{n} \rceil) + cn$. – Peter Shor Nov 1 '12 at 18:35

Unravel the recurrence once as follows: \begin{align} T(n) &=& \sqrt{n}~ T(\sqrt{n}) + n \\ &=& n^{1/2} \big ( n^{1/4} ~ T(n^{1/4}) + n^{1/2}\big) + n \\ &=& n^{1-1/4}~ T(n^{1/4}) + 2n. \end{align}

Continuing the unraveling for $k$ steps, we have that: \begin{align} \label{eqn:unrav} T(n) &=& n^{1-1/2^k} T(n^{1/2^k}) + kn. \end{align}

These steps will continue until the base case of $n^{1/2^k} = 2$. Solving for $k$ we have:

\begin{align} &&n^{1/2^k} = 2 \\ &\implies& \log n= 2^k \\ &\implies& k= \log \log n. \label{eqn:ksol} \end{align}

Substituting $k=\log \log n$ into the unraveled recurrence, we have \begin{align} T(n) = \frac{n}{2} T(2) + n \log \log n. \end{align}

• Could you rewrite your picture to MathJax? We discourage images with text as the answers. – Evil Jan 26 '16 at 18:47
• @PKG it seems like your edit is slightly different and also you explain steps, maybe you could answer on your own. – Evil Jul 11 '16 at 2:02