I have a vector that includes a value for every possible combination of two numbers out of a bigger group of n numbers (from 0 to (n-1)), excluding combinations where both numbers are the same.
For instance, if n = 4, combinations will be the ones shown in columns number1 and number2.
number1 number2 vector-index value
0 1 0 3
0 2 1 98
0 3 2 0
1 0 3 44
1 2 4 6
1 3 5 3
2 0 6 2
2 1 7 43
2 3 8 23
3 0 9 11
3 1 10 54
3 2 11 7
There are always n*(n-1) combinations and therefore that is the number of elements in the vector (12 elements in the example above).
Problem
In order to access the values in the vector I need a expression that allows me to figure out the corresponding index number for every combination.
If combinations where number1=number2 were included, the index number could be figured our using:
index = number1*(n-1)+number2
This question is related but includes also combinations where number1=number2.
Is there any expression to calculate the index in this case?
First, notice that all the pairs can be grouped into blocks of size (n-1), where n is the number of different indices. This means that given a pair (i, j), the index of the block containing it will be i(n-1). Within that block the indices are laid out sequentially, skipping over index i. If j < i, then we just look j steps past the start of the block. Otherwise, we look j-1 steps past it. Overall this gives the formula
int index = i * (n - 1) + (j < i? j : j - 1);
Note that the only difference is when number2 is greater than number1, when this happens a value from number2 sequence was skipped, so you will need to decrease the count, something like this:
index = number1 * (n - 1) + number2 - (number2 > number1 ? 1 : 0)
The cycle leader iteration algorithm is an algorithm for shuffling an array by moving all even-numbered entries to the front and all odd-numbered entries to the back while preserving their relative order. For example, given this input:
a 1 b 2 c 3 d 4 e 5
the output would be
a b c d e 1 2 3 4 5
This algorithm runs in O(n) time and uses only O(1) space.
One unusual detail of the algorithm is that it works by splitting the array up into blocks of size 3k+1. Apparently this is critical for the algorithm to work correctly, but I have no idea why this is.
Why is the choice of 3k + 1 necessary in the algorithm?
Thanks!
This is going to be a long answer. The answer to your question isn't simple and requires some number theory to fully answer. I've spent about half a day working through the algorithm and I now have a good answer, but I'm not sure I can describe it succinctly.
The short version:
Breaking the input into blocks of size 3k + 1 essentially breaks the input apart into blocks of size 3k - 1 surrounded by two elements that do not end up moving.
The remaining 3k - 1 elements in the block move according to an interesting pattern: each element moves to the position given by dividing the index by two modulo 3k.
This particular motion pattern is connected to a concept from number theory and group theory called primitive roots.
Because the number two is a primitive root modulo 3k, beginning with the numbers 1, 3, 9, 27, etc. and running the pattern is guaranteed to cycle through all the elements of the array exactly once and put them into the proper place.
This pattern is highly dependent on the fact that 2 is a primitive root of 3k for any k ≥ 1. Changing the size of the array to another value will almost certainly break this because the wrong property is preserved.
The Long Version
To present this answer, I'm going to proceed in steps. First, I'm going to introduce cycle decompositions as a motivation for an algorithm that will efficiently shuffle the elements around in the right order, subject to an important caveat. Next, I'm going to point out an interesting property of how the elements happen to move around in the array when you apply this permutation. Then, I'll connect this to a number-theoretic concept called primitive roots to explain the challenges involved in implementing this algorithm correctly. Finally, I'll explain why this leads to the choice of 3k + 1 as the block size.
Cycle Decompositions
Let's suppose that you have an array A and a permutation of the elements of that array. Following the standard mathematical notation, we'll denote the permutation of that array as σ(A). We can line the initial array A up on top of the permuted array σ(A) to get a sense for where every element ended up. For example, here's an array and one of its permutations:
A 0 1 2 3 4
σ(A) 2 3 0 4 1
One way that we can describe a permutation is just to list off the new elements inside that permutation. However, from an algorithmic perspective, it's often more helpful to represent the permutation as a cycle decomposition, a way of writing out a permutation by showing how to form that permutation by beginning with the initial array and then cyclically permuting some of its elements.
Take a look at the above permutation. First, look at where the 0 ended up. In σ(A), the element 0 ended up taking the place of where the element 2 used to be. In turn, the element 2 ended up taking the place of where the element 0 used to be. We denote this by writing (0 2), indicating that 0 should go where 2 used to be, and 2 should go were 0 used to be.
Now, look at the element 1. The element 1 ended up where 4 used to be. The number 4 then ended up where 3 used to be, and the element 3 ended up where 1 used to be. We denote this by writing (1 4 3), that 1 should go where 4 used to be, that 4 should go where 3 used to be, and that 3 should go where 1 used to be.
Combining these together, we can represent the overall permutation of the above elements as (0 2)(1 4 3) - we should swap 0 and 2, then cyclically permute 1, 4, and 3. If we do that starting with the initial array, we'll end up at the permuted array that we want.
Cycle decompositions are extremely useful for permuting arrays in place because it's possible to permute any individual cycle in O(C) time and O(1) auxiliary space, where C is the number of elements in the cycle. For example, suppose that you have a cycle (1 6 8 4 2). You can permute the elements in the cycle with code like this:
int[] cycle = {1, 6, 8, 4, 2};
int temp = array[cycle[0]];
for (int i = 1; i < cycle.length; i++) {
swap(temp, array[cycle[i]]);
}
array[cycle[0]] = temp;
This works by just swapping everything around until everything comes to rest. Aside from the space usage required to store the cycle itself, it only needs O(1) auxiliary storage space.
In general, if you want to design an algorithm that applies a particular permutation to an array of elements, you can usually do so by using cycle decompositions. The general algorithm is the following:
for (each cycle in the cycle decomposition algorithm) {
apply the above algorithm to cycle those elements;
}
The overall time and space complexity for this algorithm depends on the following:
How quickly can we determine the cycle decomposition we want?
How efficiently can we store that cycle decomposition in memory?
To get an O(n)-time, O(1)-space algorithm for the problem at hand, we're going to show that there's a way to determine the cycle decomposition in O(1) time and space. Since everything will get moved exactly once, the overall runtime will be O(n) and the overall space complexity will be O(1). It's not easy to get there, as you'll see, but then again, it's not awful either.
The Permutation Structure
The overarching goal of this problem is to take an array of 2n elements and shuffle it so that even-positioned elements end up at the front of the array and odd-positioned elements end up at the end of the array. Let's suppose for now that we have 14 elements, like this:
0 1 2 3 4 5 6 7 8 9 10 11 12 13
We want to shuffle the elements so that they come out like this:
0 2 4 6 8 10 12 1 3 5 7 9 11 13
There are a couple of useful observations we can have about the way that this permutation arises. First, notice that the first element does not move in this permutation, because even-indexed elements are supposed to show up in the front of the array and it's the first even-indexed element. Next, notice that the last element does not move in this permutation, because odd-indexed elements are supposed to end up at the back of the array and it's the last odd-indexed element.
These two observations, put together, means that if we want to permute the elements of the array in the desired fashion, we actually only need to permute the subarray consisting of the overall array with the first and last elements dropped off. Therefore, going forward, we are purely going to focus on the problem of permuting the middle elements. If we can solve that problem, then we've solved the overall problem.
Now, let's look at just the middle elements of the array. From our above example, that means that we're going to start with an array like this one:
Element 1 2 3 4 5 6 7 8 9 10 11 12
Index 1 2 3 4 5 6 7 8 9 10 11 12
We want to get the array to look like this:
Element 2 4 6 8 10 12 1 3 5 7 9 11
Index 1 2 3 4 5 6 7 8 9 10 11 12
Because this array was formed by taking a 0-indexed array and chopping off the very first and very last element, we can treat this as a one-indexed array. That's going to be critically important going forward, so be sure to keep that in mind.
So how exactly can we go about generating this permutation? Well, for starters, it doesn't hurt to take a look at each element and to try to figure out where it began and where it ended up. If we do so, we can write things out like this:
The element at position 1 ended up at position 7.
The element at position 2 ended up at position 1.
The element at position 3 ended up at position 8.
The element at position 4 ended up at position 2.
The element at position 5 ended up at position 9.
The element at position 6 ended up at position 3.
The element at position 7 ended up at position 10.
The element at position 8 ended up at position 4.
The element at position 9 ended up at position 11.
The element at position 10 ended up at position 5.
The element at position 11 ended up at position 12.
The element at position 12 ended up at position 6.
If you look at this list, you can spot a few patterns. First, notice that the final index of all the even-numbered elements is always half the position of that element. For example, the element at position 4 ended up at position 2, the element at position 12 ended up at position 6, etc. This makes sense - we pushed all the even elements to the front of the array, so half of the elements that came before them will have been displaced and moved out of the way.
Now, what about the odd-numbered elements? Well, there are 12 total elements. Each odd-numbered element gets pushed to the second half, so an odd-numbered element at position 2k+1 will get pushed to at least position 7. Its position within the second half is given by the value of k. Therefore, the elements at an odd position 2k+1 gets mapped to position 7 + k.
We can take a minute to generalize this idea. Suppose that the array we're permuting has length 2n. An element at position 2x will be mapped to position x (again, even numbers get halfed), and an element at position 2x+1 will be mapped to position n + 1 + x. Restating this:
The final position of an element at position p is determined as follows:
If p = 2x for some integer x, then 2x ↦ x
If p = 2x+1 for some integer x, then 2x+1 ↦ n + 1 + x
And now we're going to do something that's entirely crazy and unexpected. Right now, we have a piecewise rule for determining where each element ends up: we either divide by two, or we do something weird involving n + 1. However, from a number-theoretic perspective, there is a single, unified rule explaining where all elements are supposed to end up.
The insight we need is that in both cases, it seems like, in some way, we're dividing the index by two. For the even case, the new index really is formed by just dividing by two. For the odd case, the new index kinda looks like it's formed by dividing by two (notice that 2x+1 went to x + (n + 1)), but there's an extra term in there. In a number-theoretic sense, though, both of these really correspond to division by two. Here's why.
Rather than taking the source index and dividing by two to get the destination index, what if we take the destination index and multiply by two? If we do that, an interesting pattern emerges.
Suppose our original number was 2x. The destination is then x, and if we double the destination index to get back 2x, we end up with the source index.
Now suppose that our original number was 2x+1. The destination is then n + 1 + x. Now, what happens if we double the destination index? If we do that, we get back 2n + 2 + 2x. If we rearrange this, we can alternatively rewrite this as (2x+1) + (2n+1). In other words, we've gotten back the original index, plus an extra (2n+1) term.
Now for the kicker: what if all of our arithmetic is done modulo 2n + 1? In that case, if our original number was 2x + 1, then twice the destination index is (2x+1) + (2n+1) = 2x + 1 (modulo 2n+1). In other words, the destination index really is half of the source index, just done modulo 2n+1!
This leads us to a very, very interesting insight: the ultimate destination of each of the elements in a 2n-element array is given by dividing that number by two, modulo 2n+1. This means that there really is a nice, unified rule for determining where everything goes. We just need to be able to divide by two modulo 2n+1. It just happens to work out that in the even case, this is normal integer division, and in the odd case, it works out to taking the form n + 1 + x.
Consequently, we can reframe our problem in the following way: given a 1-indexed array of 2n elements, how do we permute the elements so that each element that was originally at index x ends up at position x/2 mod (2n+1)?
Cycle Decompositions Revisited
At this point, we've made quite a lot of progress. Given any element, we know where that element should end up. If we can figure out a nice way to get a cycle decomposition of the overall permutation, we're done.
This is, unfortunately, where things get complicated. Suppose, for example, that our array has 10 elements. In that case, we want to transform the array like this:
Initial: 1 2 3 4 5 6 7 8 9 10
Final: 2 4 6 8 10 1 3 5 7 9
The cycle decomposition of this permutation is (1 6 3 7 9 10 5 8 4 2). If our array has 12 elements, we want to transform it like this:
Initial: 1 2 3 4 5 6 7 8 9 10 11 12
Final: 2 4 6 8 10 12 1 3 5 7 9 11
This has cycle decomposition (1 7 10 5 9 11 12 6 3 8 4 2 1). If our array has 14 elements, we want to transform it like this:
Initial: 1 2 3 4 5 6 7 8 9 10 11 12 13 14
Final: 2 4 6 8 10 12 14 1 3 5 7 9 11 13
This has cycle decomposition (1 8 4 2)(3 9 12 6)(5 10)(7 11 13 14). If our array has 16 elements, we want to transform it like this:
Initial: 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16
Final: 2 4 6 8 10 12 14 16 1 3 5 7 9 11 13 15
This has cycle decomposition (1 9 13 15 16 8 4 2)(3 10 5 11 14 7 12 6).
The problem here is that these cycles don't seem to follow any predictable patterns. This is a real problem if we're going to try to solve this problem in O(1) space and O(n) time. Even though given any individual element we can figure out what cycle contains it and we can efficiently shuffle that cycle, it's not clear how we figure out what elements belong to what cycles, how many different cycles there are, etc.
Primitive Roots
This is where number theory comes in. Remember that each element's new position is formed by dividing that number by two, modulo 2n+1. Thinking about this backwards, we can figure out which number will take the place of each number by multiplying by two modulo 2n+1. Therefore, we can think of this problem by finding the cycle decomposition in reverse: we pick a number, keep multiplying it by two and modding by 2n+1, and repeat until we're done with the cycle.
This gives rise to a well-studied problem. Suppose that we start with the number k and think about the sequence k, 2k, 22k, 23k, 24k, etc., all done modulo 2n+1. Doing this gives different patterns depending on what odd number 2n+1 you're modding by. This explains why the above cycle patterns seem somewhat arbitrary.
I have no idea how anyone figured this out, but it turns out that there's a beautiful result from number theory that talks about what happens if you take this pattern mod 3k for some number k:
Theorem: Consider the sequence 3s, 3s·2, 3s·22, 3s·23, 3s·24, etc. all modulo 3k for some k ≥ s. This sequence cycles through through every number between 1 and 3k, inclusive, that is divisible by 3s but not divisible by 3s+1.
We can try this out on a few examples. Let's work modulo 27 = 32. The theorem says that if we look at 3, 3 · 2, 3 · 4, etc. all modulo 27, then we should see all the numbers less than 27 that are divisible by 3 and not divisible by 9. Well, let'see what we get:
3 · 20 = 3 · 1 = 3 = 3 mod 27
3 · 21 = 3 · 2 = 6 = 6 mod 27
3 · 22 = 3 · 4 = 12 = 12 mod 27
3 · 23 = 3 · 8 = 24 = 24 mod 27
3 · 24 = 3 · 16 = 48 = 21 mod 27
3 · 25 = 3 · 32 = 96 = 15 mod 27
3 · 26 = 3 · 64 = 192 = 3 mod 27
We ended up seeing 3, 6, 12, 15, 21, and 24 (though not in that order), which are indeed all the numbers less than 27 that are divisible by 3 but not divisible by 9.
We can also try this working mod 27 and considering 1, 2, 22, 23, 24 mod 27, and we should see all the numbers less than 27 that are divisible by 1 and not divisible by 3. In other words, this should give back all the numbers less than 27 that aren't divisible by 3. Let's see if that's true:
20 = 1 = 1 mod 27
21 = 2 = 2 mod 27
22 = 4 = 4 mod 27
23 = 8 = 8 mod 27
24 = 16 = 16 mod 27
25 = 32 = 5 mod 27
26 = 64 = 10 mod 27
27 = 128 = 20 mod 27
28 = 256 = 13 mod 27
29 = 512 = 26 mod 27
210 = 1024 = 25 mod 27
211 = 2048 = 23 mod 27
212 = 4096 = 19 mod 27
213 = 8192 = 11 mod 27
214 = 16384 = 22 mod 27
215 = 32768 = 17 mod 27
216 = 65536 = 7 mod 27
217 = 131072 = 14 mod 27
218 = 262144 = 1 mod 27
Sorting these, we got back the numbers 1, 2, 4, 5, 7, 8, 10, 11, 13, 14, 16, 17, 19, 20, 22, 23, 25, 26 (though not in that order). These are exactly the numbers between 1 and 26 that aren't multiples of three!
This theorem is crucial to the algorithm for the following reason: if 2n+1 = 3k for some number k, then if we process the cycle containing 1, it will properly shuffle all numbers that aren't multiples of three. If we then start the cycle at 3, it will properly shuffle all numbers that are divisible by 3 but not by 9. If we then start the cycle at 9, it will properly shuffle all numbers that are divisible by 9 but not by 27. More generally, if we use the cycle shuffle algorithm on the numbers 1, 3, 9, 27, 81, etc., then we will properly reposition all the elements in the array exactly once and will not have to worry that we missed anything.
So how does this connect to 3k + 1? Well, we need to have that 2n + 1 = 3k, so we need to have that 2n = 3k - 1. But remember - we dropped the very first and very last element of the array when we did this! Adding those back in tells us that we need blocks of size 3k + 1 for this procedure to work correctly. If the blocks are this size, then we know for certain that the cycle decomposition will consist of a cycle containing 1, a nonoverlapping cycle containing 3, a nonoverlapping cycle containing 9, etc. and that these cycles will contain all the elements of the array. Consequently, we can just start cycling 1, 3, 9, 27, etc. and be absolutely guaranteed that everything gets shuffled around correctly. That's amazing!
And why is this theorem true? It turns out that a number k for which 1, k, k2, k3, etc. mod pn that cycles through all the numbers that aren't multiples of p (assuming p is prime) is called a primitive root of the number pn. There's a theorem that says that 2 is a primitive root of 3k for all numbers k, which is why this trick works. If I have time, I'd like to come back and edit this answer to include a proof of this result, though unfortunately my number theory isn't at a level where I know how to do this.
Summary
This problem was tons of fun to work on. It involves cute tricks with dividing by two modulo an odd numbers, cycle decompositions, primitive roots, and powers of three. I'm indebted to this arXiv paper which described a similar (though quite different) algorithm and gave me a sense for the key trick behind the technique, which then let me work out the details for the algorithm you described.
Hope this helps!
Here is most of the mathematical argument missing from templatetypedef’s
answer. (The rest is comparatively boring.)
Lemma: for all integers k >= 1, we have
2^(2*3^(k-1)) = 1 + 3^k mod 3^(k+1).
Proof: by induction on k.
Base case (k = 1): we have 2^(2*3^(1-1)) = 4 = 1 + 3^1 mod 3^(1+1).
Inductive case (k >= 2): if 2^(2*3^(k-2)) = 1 + 3^(k-1) mod 3^k,
then q = (2^(2*3^(k-2)) - (1 + 3^(k-1)))/3^k.
2^(2*3^(k-1)) = (2^(2*3^(k-2)))^3
= (1 + 3^(k-1) + 3^k*q)^3
= 1 + 3*(3^(k-1)) + 3*(3^(k-1))^2 + (3^(k-1))^3
+ 3*(1+3^(k-1))^2*(3^k*q) + 3*(1+3^(k-1))*(3^k*q)^2 + (3^k*q)^3
= 1 + 3^k mod 3^(k+1).
Theorem: for all integers i >= 0 and k >= 1, we have
2^i = 1 mod 3^k if and only if i = 0 mod 2*3^(k-1).
Proof: the “if” direction follows from the Lemma. If
i = 0 mod 2*3^(k-1), then
2^i = (2^(2*3^(k-1)))^(i/(2*3^(k-1)))
= (1+3^k)^(i/(2*3^(k-1))) mod 3^(k+1)
= 1 mod 3^k.
The “only if” direction is by induction on k.
Base case (k = 1): if i != 0 mod 2, then i = 1 mod 2, and
2^i = (2^2)^((i-1)/2)*2
= 4^((i-1)/2)*2
= 2 mod 3
!= 1 mod 3.
Inductive case (k >= 2): if 2^i = 1 mod 3^k, then
2^i = 1 mod 3^(k-1), and the inductive hypothesis implies that
i = 0 mod 2*3^(k-2). Let j = i/(2*3^(k-2)). By the Lemma,
1 = 2^i mod 3^k
= (1+3^(k-1))^j mod 3^k
= 1 + j*3^(k-1) mod 3^k,
where the dropped terms are divisible by (3^(k-1))^2, so
j = 0 mod 3, and i = 0 mod 2*3^(k-1).
I want to convert a number in base 10 into a special base form like this:
A*2^2 + B*3^1 + C*2^0
A can take on values of [0,1]
B can take on values of [0,1,2]
C can take on values of [0,1]
For example, the number 8 would be
1*2^2 + 1*3 + 1.
It is guaranteed that the given number can be converted to this specialized base system.
I know how to convert from this base system back to base-10, but I do not know how to convert from base-10 to this specialized base system.
In short words, treat every base number (2^2, 3^1, 2^0 in your example) as weight of an item, and the whole number as the capacity of a bag. This problem wants us to find a combination of these items which they fill the bag exactly.
In the first place this problem is NP-complete. It is identical to the subset sum problem, which can also be seen as a derivative problem of the knapsack problem.
Despite this fact, this problem can however be solved by a pseudo-polynomial time algorithm using dynamic programming in O(nW) time, which n is the number of bases, and W is the number to decompose. The details can be find in this wikipedia page: http://en.wikipedia.org/wiki/Knapsack_problem#Dynamic_programming and this SO page: What's it called when I want to choose items to fill container as full as possible - and what algorithm should I use?.
Simplifying your "special base":
X = A * 4 + B * 3 + C
A E {0,1}
B E {0,1,2}
C E {0,1}
Obviously the largest number that can be represented is 4 + 2 * 3 + 1 = 11
To figure out how to get the values of A, B, C you can do one of two things:
There are only 12 possible inputs: create a lookup table. Ugly, but quick.
Use some algorithm. A bit trickier.
Let's look at (1) first:
A B C X
0 0 0 0
0 0 1 1
0 1 0 3
0 1 1 4
0 2 0 6
0 2 1 7
1 0 0 4
1 0 1 5
1 1 0 7
1 1 1 8
1 2 0 10
1 2 1 11
Notice that 2 and 9 cannot be expressed in this system, while 4 and 7 occur twice. The fact that you have multiple possible solutions for a given input is a hint that there isn't a really robust algorithm (other than a look up table) to achieve what you want. So your table might look like this:
int A[] = {0,0,-1,0,0,1,0,1,1,-1,1,1};
int B[] = {0,0,-1,1,1,0,2,1,1,-1,2,2};
int C[] = {0,1,-1,0,2,1,0,1,1,-1,0,1};
Then look up A, B, C. If A < 0, there is no solution.
This was one of my interview questions.
We have a matrix containing integers (no range provided). The matrix is randomly populated with integers. We need to devise an algorithm which finds those rows which match exactly with a column(s). We need to return the row number and the column number for the match. The order of of the matching elements is the same. For example, If, i'th row matches with j'th column, and i'th row contains the elements - [1,4,5,6,3]. Then jth column would also contain the elements - [1,4,5,6,3]. Size is n x n.
My solution:
RCEQUAL(A,i1..12,j1..j2)// A is n*n matrix
if(i2-i1==2 && j2-j1==2 && b[n*i1+1..n*i2] has [j1..j2])
use brute force to check if the rows and columns are same.
if (any rows and columns are same)
store the row and column numbers in b[1..n^2].//b[1],b[n+2],b[2n+3].. store row no,
// b[2..n+1] stores columns that
//match with row 1, b[n+3..2n+2]
//those that match with row 2,etc..
else
RCEQUAL(A,1..n/2,1..n/2);
RCEQUAL(A,n/2..n,1..n/2);
RCEQUAL(A,1..n/2,n/2..n);
RCEQUAL(A,n/2..n,n/2..n);
Takes O(n^2). Is this correct? If correct, is there a faster algorithm?
you could build a trie from the data in the rows. then you can compare the columns with the trie.
this would allow to exit as soon as the beginning of a column do not match any row. also this would let you check a column against all rows in one pass.
of course the trie is most interesting when n is big (setting up a trie for a small n is not worth it) and when there are many rows and columns which are quite the same. but even in the worst case where all integers in the matrix are different, the structure allows for a clear algorithm...
You could speed up the average case by calculating the sum of each row/column and narrowing your brute-force comparison (which you have to do eventually) only on rows that match the sums of columns.
This doesn't increase the worst case (all having the same sum) but if your input is truly random that "won't happen" :-)
This might only work on non-singular matrices (not sure), but...
Let A be a square (and possibly non-singular) NxN matrix. Let A' be the transpose of A. If we create matrix B such that it is a horizontal concatenation of A and A' (in other words [A A']) and put it into RREF form, we will get a diagonal on all ones in the left half and some square matrix in the right half.
Example:
A = 1 2
3 4
A'= 1 3
2 4
B = 1 2 1 3
3 4 2 4
rref(B) = 1 0 0 -2
0 1 0.5 2.5
On the other hand, if a column of A were equal to a row of A then column of A would be equal to a column of A'. Then we would get another single 1 in of of the columns of the right half of rref(B).
Example
A=
1 2 3 4 5
2 6 -3 4 6
3 8 -7 6 9
4 1 7 -5 3
5 2 4 -1 -1
A'=
1 2 3 4 5
2 6 8 1 2
3 -3 -7 7 4
4 4 6 -5 -1
5 6 9 3 -1
B =
1 2 3 4 5 1 2 3 4 5
2 6 -3 4 6 2 6 8 1 2
3 8 -7 6 9 3 -3 -7 7 4
4 1 7 -5 3 4 4 6 -5 -1
5 2 4 -1 -1 5 6 9 3 -1
rref(B)=
1 0 0 0 0 1.000 -3.689 -5.921 3.080 0.495
0 1 0 0 0 0 6.054 9.394 -3.097 -1.024
0 0 1 0 0 0 2.378 3.842 -0.961 0.009
0 0 0 1 0 0 -0.565 -0.842 1.823 0.802
0 0 0 0 1 0 -2.258 -3.605 0.540 0.662
1.000 in the top row of the right half means that the first column of A matches on of its rows. The fact that the 1.000 is in the left-most column of the right half means that it is the first row.
Without looking at your algorithm or any of the approaches in the previous answers, but since the matrix has n^2 elements to begin with, I do not think there is a method which does better than that :)
IFF the matrix is truely random...
You could create a list of pointers to the columns sorted by the first element. Then create a similar list of the rows sorted by their first element. This takes O(n*logn).
Next create an index into each sorted list initialized to 0. If the first elements match, you must compare the whole row. If they do not match, increment the index of the one with the lowest starting element (either move to the next row or to the next column). Since each index cycles from 0 to n-1 only once, you have at most 2*n comparisons unless all the rows and columns start with the same number, but we said a matrix of random numbers.
The time for a row/column comparison is n in the worst case, but is expected to be O(1) on average with random data.
So 2 sorts of O(nlogn), and a scan of 2*n*1 gives you an expected run time of O(nlogn). This is of course assuming random data. Worst case is still going to be n**3 for a large matrix with most elements the same value.