Complexity for towers of Hanoi?

I was recently solving Towers of Hanoi problem. I used a "Divide and Conquer" Strategy to solve this problem. I divided the main problem into three smaller sub problems and thus following recurrence was generated.

T(n)=2T(n-1)+1

O(2^n) [exponential time]

Then i tried to use memoization technique to solve it, but here too the space complexity was exponential and heap space exhausted very soon and problem was still unsolvable for larger n.

Is there a way to solve the problem in less than exponential time? What is the best time in which the problem can be solved?

• what do you mean by the "Tower of Hanoi" problem? Do you mean determining the state after k moves, or determining how many moves it takes to get into state X? – Mike T Sep 12 '12 at 7:24
• @MikeT How many moves will be required to move n disks from a src peg to a destination peg using an auxiliary(extra) peg, provided u can only move a single disc at a time and no larger disc can be placed on a samller disc during the movement. – user1581106 Sep 12 '12 at 7:30
• (2^n)-1, constant time solution. Well, "constant" as far as 2^n is constant, which I think is actually O(log(n)) – Mike T Sep 12 '12 at 10:45
• @MikeT Plus the time it takes to convert that to the usual base-10 notation ( cs.stackexchange.com/questions/21736/… ) for output. Unless you compute the arithmetic operations in the right base from the start. – masterxilo Oct 17 '17 at 12:06

It depends what you mean by "solved". The Tower of Hanoi problem with 3 pegs and `n` disks takes `2**n - 1` moves to solve, so if you want to enumerate the moves, you obviously can't do better than `O(2**n)` since enumerating `k` things is `O(k)`.

On the other hand, if you just want to know the number of moves required (without enumerating them), calculating `2**n - 1` is a much faster operation.

Also worth noting, the enumeration of the moves can be done iteratively with `O(n)` space complexity as follows (`disk1` is the smallest disk):

``````while true:
if n is even:
move disk1 one peg left (first peg wraps around to last peg)
else:
move disk1 one peg right (last peg wraps around to first peg)

if done:
break
else:
make the only legal move not involving disk1
``````

You can solve the recurrence and obtain a closed form.

T(n) = 2*T(n-1) + 1

T(n) = 2 * ( 2 * T(n-2) + 1) + 1

T(n) = (2 ^ 2) * T(n-2) + 2^1 + 2^0

T(n) = (2^k) * T(n-k) + 2^(k-1) + 2^(k-2) + ... + 2^0

Solving this the closed from comes out to be

T(n) = (2^n) - 1 with T(0) = 0

Now use exponentiation by squaring.

• I also know how this recurrence can be solved. My question was whether the puzzle can be solved in less than exponential time. – user1581106 Sep 12 '12 at 7:44
• No, without changing the parameters of the game it cannot be solved in less than exponential time. – Solsma Dev Mar 12 '14 at 23:38

Unfortunantly it's impossible to resolve this problem in less time, because number of moves needed to change position of all hanoi tower is exponential. So the best solution is lineal according to the number of steps O(T), so in number of tails solution is exponential O(2^n)

There are exactly 2^n-1 moves, so for listing them all we cannot do better than O(2^n) time complexity.

Enumeration of the necessary moves is possible in O(1) (well, O(log n) if you take arbitrary size integers) space:

``````(define (fbs n i) (if (even? n) (fbs (/ n 2) (+ i 1)) i))

(define (fb n) (fbs n 1))

(define (hanois n i m)
(
cond
((= i m) "DONE")
(else
(define k (fb i))
(print "move disk " k " " (if (even? (+ n k)) "left" "right"))
(hanois n (+ 1 i) m))))

(define (hanoi n) (hanois n 1 (expt 2 n)))
``````

[Scheme]

Note that this algorithm has an overhead of log n due to arithmetic (and the algorithm `fb` finding the position of the least significant set bit). Any naive solution involving any kind of increment/decrement on a counter will have the same overhead.

It depends a bit on what kind of representation you accept. Imagine the following representation:

``````OneMove
from : integral
to   : integral

Solution
step_one   : optional reference to Solution
step_two   : OneMove
step_three : optional reference to Solution
``````

Such a representation can actually be created in linear complexity, since there is a lot of repetition involved.

I just tried it, constructing such a solution for height 64 took less than a millisecond. Of course, stepping through it still takes 2n-1 steps.

You did not specify language, but if you want code in C++, drop a line.