Mathematical Analysis of the Toggle Squares Game

Dr. Ken Housley,

Most of this page is in ASCII, because I sent it to myself from home as an email message and some diagrams are less complicated to write in ASCII than in HTML. However, I will try to emphasize some stuff in the text with HTML formatting.

I hope everything is clear to you. If you want clarification on something, send a message to shlomif@iglu.org.il and I'll place the clarification on this page.

     Shlomi Fish

Recent Note: I managed to prove that the two-way algorithm works for 3k and 3k+1 square boards. It was added as theorems 4 and 5.

More Recent Note: Added section about the dimension of solutions space in 3k+2 boards and a note about the efficiency of the algorithms.

Table of Contents

Analysis of a 1-D Toggle-board

First, I'll prove some analogous statements about a one-dimensional
toggle-squares board, i.e: conjectures that apply to the set of rows of size
1*n and in which the presses are:
110000 ,
111000 ,
011100 ,
001110 ,
000111 ,
000011 (n=6 was given as an example).
      
Mathematically, it can be treated as vectors that belong to the linear
space (or vector field) {0,1}^n where the operations in the set {0,1} are
XOR for '+' and AND for '*'.

Lemma 1

A 1-D toggle field is solveable for every state if (and only if) the vector 100...000 can be formed as combination of the presses.

Proof:
If 1000000 can be solved then along with the press 110000...00 than
010000000 can be solved too. Furthermore:
100000...00   + (xor)
010000...00   +
111000...00 =
-------------
001000...00
and from here it can be proved inductively that the vectors with all 0's
and one 1, are solveable. Since this is a basis of {1,0}^N then every state
is solveable. (i.e contained in Sp{Presses} )

Lemma 2

A 1-D toggle field of size N is solveable for every state if N = 3k or N = 3k+1 and isn't if N = 3k+2 for some non-negative integer k.

Proof:
One way to show it is by inspecting the matrixes of the presses set:
1
,
11
11
,
110
111
011
,
1100
1110
0111
0011

and calculate their determinants (according to the boolean operations).
After calculating the determinants of the first three by hand: 1, 0 and 1
respectively, we can show that the determinant of every matrix where N > 3 is:

based on the first row: det (Presses Matrix (N-1)) XOR - det(Matrix that
contains 1 at the top-left cell and below a Presses Matrix of size N-2) =
det (PM(N-1)) XOR det(1 * PM(N-2)) = det(PM(N-1)) XOR det(PM(N-2)).

Hence, it's a XOR of the detereminants of the two previous matrixes. (A
boolean Fibonnaci series :-) )

Recursively, we get a repeating sequence of
N    | 1 2 3 4 5 6 7 8 9 ...
det  | 1 0 1 1 0 1 1 0 1 ...

Matrixes with a zero determinant cannot form every vector, and vice versa.

It can also be proved (at least for the solveable cases) using Lemma 1.
For N=3k 1000....000 can be formed by:
1110000...0000         XOR
0001110...0000         XOR
.
.
0000000...0111  =
---------------
1111111...11111111     XOR
0000000...00000011     XOR
0000000...00011100     XOR
0000000...11100000     XOR
011100000000000000     =     (3k = 2 + (k-1)*3 + 1)
------------------
100000000000000000    (Q.E.D)

and likewise for 3k+1. For 3k+2, we can show that the vector 11111...111 can
be formed in two different ways:
11000000...000000    XOR
00111000...000000    XOR
00000111...000000    XOR
.
.
00000000...000111   =
-----------------
11111111111111111

and

11100000...000000 XOR
00011100...000000 XOR
.
.
00000000...011100 XOR
00000000...000011 =
-----------------
11111111111111111

and thus the dimension of the span is less than n, and so not every state is
included in it, and is solveable.



Analysis of 2-D Boards

Now for the actual proofs:

Theorem 1

2-D (3k+2) * (3k+2) boards are not solveable for every state.

Proof:
If we take a look at the topmost row - it is affected only by the presses
on the two topmost rows. The effective portions of all the presses on that
row is the set:
11000..00
11100..00
.
.
00000.111
00000.011

and Lemma 2 proved that for N=3k+2 it has unsolveable states. If some
formations of the first row cannot be solved by any combination of the
presses on the block, much less the entire board can be solved for every
state.

Theorem 2

2-D boards of size 3k * 3k or (3k+1) * (3k+1) are solveable for every state.

Proof:
If we restrict ourselves to the presses on cells of one column, then we get
an array of rectangular vectors with a fixed horizontal postion and width
and a y-dimensions that resemble the 1-D toggle-squares vector set. e.g:
110000
110000
000000
000000
000000
000000  ,

110000
110000
110000
000000
000000
000000  ,

000000
110000
110000
110000
000000
000000  ,
.
.
According to Lemma 2, with 1-D presses sets with size 3k and 3k+1 every
vector can be formed. Thus we can achieve the following rectangles, with
the presses of one column:
110000
000000
000000
000000
000000
000000

000000
110000
000000
000000
000000
000000

000000
000000
110000
000000
000000
000000

.
.
000000
000000
000000
000000
000000
110000

and the same for every other column. Now, if we look on any row of cells,
we will see that the "sticks" that were generated from the various columns
in that row are also the 1-D TogSqrs sequence. Because N=3k,3k+1 again,
every row is solveable for all states, and therefore, the entire board is
solveable for all states.

Diagram:
110000 , 111000 , 011100 , 001110 , 000111 , 000011
000000   .        .        .        .        .
.        .        .        .        .        .

Theorem 3

Solveable states of 3k+2 boards can be solved by the one-way algorithm.

The one way algorithm is described as follows:
Scan every row from top to bottom. For every row, scan every cell from right
to left, and for every filled cell, click the cell to the bottom-left of it.

Proof:
Every row can be cleared by pressing a cell to the left or the bottom-left
of every filled cell, because that way one consistently regress the
right-most filled cell. Moreover, it's impossible that only the left-most
cell will be filled in a solved state (Lemma 1).
By going down, we ensure that no new cells will be filled instead of the
new one, and we can clear that way the first N-1 rows. After the iteration
when the first N-1 rows are cleared, the last row cannot be partially
filled because it's a column-wise contradiction of Lemma 1. Therefore, it
will also be cleared.

Theorem 4:

A 2-D board of size (3k) * (3k) can be solved by using the two-way - two-way algorithm.


The two way algorithm is described as follows:
Scan the rows from top to bottom. For every row, scan the cells from right
to left, and for every filled cell click the cell to the bottom-left of it.
Then scan the cells in that row, from right to left and for every filled
cell click the cell to the bottom-right of it.
After you reached the bottom, do the same thing from bottom to top, but with
pressing the cell to the top-right or top-left instead.

Proof:
One can show that the two-way algorithm works for N=3k in a one-dimensional
board. Even if there is a state of 100...000000000 ,  by pressing to the
right of the filled squares one eventually gets to a 000...000000011 state
which is soon cleared to 000...000000000.

This provides us with a method to clear rows by pressing cells in the row
beneath them, and we can use it to clear all rows except the bottom one.
Now, let's take a look at a situation in which there is a partially filled
row, and above it, at least two empty ones. I will prove that clearing it
by pressing the cells in the row above it, will make the two rows above it
a duplicate of its original state. For example if the status was:

000000
000000       <- I am pressing this row
011010

then it will turn into

011010
011010
000000

The proof is quite simple. If we take a look at one of a cells above an
initially filled cell, then the cells that affect it and the bottom cell
were pressed an uneven number of times, during the clearing process. (or else
the state of the bottom cell would have remained filled).

Thus, it will also change its state and become filled. Likewise, a cell above
an unfilled cell in the bottom row, was switched an even number of times and
will be unchanged at the end.

With the same deduction it can be shown that two duplicate rows once cleared
will fill the row above them in the same formation (provided it was initially
blank). E.g:

000000
110011
110011

will become

110011
000000
000000

Since N is equal to 3k, then after the bottom-to-top iteration we will end up
with the two topmost rows filled in the same formation. Then, the topmost
row will be cleared along with the lower one.


Now, for the remaining modules:
In a 1-D board where N=3k+1 the two-way method as is, will ping the
possible remaining 1 back and forth between the two edges. Therefore if
there is a state of 1000...0 than one should use the leftmost press to
change it into 0100...000. Then, by repeatetive pressing to the right
of the leftmost filled square, one gets to the 0...11 state, which is
afterwards cleared.

Theorem 5:

A 2-D board of size (3k+1)*(3k+1) can be cleared by an down-(edge)-up iteration of left-(edge)-right row clearing scheme.


This algorithm is similiar to the two-way algorithm, except that if a at the
end of the left iteration, there is a single filled cell, one has to press
on its lower or upper cell, before moving on. Likewise, if at the end of the
down scanning, you have filled cells in bottom row, you have to clear them
by pressing cells of the bottom row.

Proof:
Very similiar to Theorem 4 except those notes:

1. In N=3k+1 the two-way method as is, will ping the possible remaining
1 back and forth between the two edges. Therefore if there is a state
of 1000...0 than one should use the leftmost press to change it into
0100...000. Then, by repeatetive pressing to the right of the leftmost
filled square, one gets to the 0...11 state, which is afterwards
cleared.

To clear the rows in a 3k+1 board one should use this method.

2. The bottom row (if still partially filled) should be moved to the
row above it, by clearing it by presses of cells of the bottom row.
Then it can be transposed in the same manner described in Theorem 4 to
the the two topmost rows and then cleared.

For example, if the status is
0000000
0000000
0110110
  | |
press those cells and it will be be moved to

0000000
0110110
0000000



The Dimension of the Presses Span in 3k+2 boards

(3k+2)*(3k+2) boards are not solveable for every state. The solveable
states form a vector field which is formed by the spanning all the
presses. Since, in this case it does not include all the states, I
wondered if we can calculate its dimension or characterize it somehow.
I think I know the answer.

First in 1-D: the presses of {0,1}*(3k+2) span a field of size 3k+1
because it takes only one extra vector - 100...000, so they will form
every possible state (Lemma 1).

Since the 1-D clearing mechanism for 3k+2 uses only the leftmost 3k+1
cells to clear every solveable state (part of Theorem 3), then
their presses are a valid basis for this linear space.

The one-way - one-way clearing algorithm which was proved in Theorem 3,
uses only a (3k+1)*(3k+1) square of presses to solve the entire board.
Ergo, the dimension is (3k+1)^2 or less. I believe it _is_ (3k+1)^2 and
I think I can prove it by showing that the presses of a corner
(3k+1)*(3k+1) are linearily independant. In the boolean field the
meaning is that any number of them other than zero XORed together will
not generate the clear state.

I'll demonstrate on a 5*5 board:

    |  |
  - 00000
    00000
    00000
  - 00000
    00000

The '-'s and '|'s mark the relevant presses. Let's assume that a
certain number of presses in the square can form the clear state. If
so, then Pr(4,4) cannot be one of them because it is the only press
that can affect square (5,5). Moreover, Pr(3,4) and Pr(4,3) cannot be
included either, becuase, once Pr(4,4) is eliminated they are the only
ones that can affect (4,5) and (5,4) respectively. And so forth,
proving that that all the presses of cells (1,4)-(4,4) and (4,1)-(4,4)
cannot be part of the zero sum.

The same can be deduced for the next layer starting from Pr(3,3), which
is the only vector left that can affect square (4,4). And so-on for the
other layers, proving that they are a linearily independant set of
vectors. In conclusion, there cannot be less than (3k+1)^2 vectors that
span the space of the solveable states of (3k+2) boards.

A Note about Efficiency

I believe the previous section showed that the 1w-1w algorithm for
clearing (3k+2) boards is as efficient as it could be, i.e. requires
the minimal number of presses.

As for boards of other sizes: the 2w-2w algorithm is not the most
efficient one in relevance to the number of presses it takes to solve
the board. I noticed that when I solved a couple of boards and realized
that the number of moves it took me with it was greater than the number
which was returned from my matrix-canonization program.

However, I believe it is agreeable that it is the simplest algorithm
(yet) regarding "CPU" requirement and growing complexity, and has the
advantage that it can be utilized without the aid of a computer.

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