Gaussian elimination

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In mathematics, Gaussian elimination or Gauss-Jordan elimination, named after Carl Friedrich Gauss and Wilhelm Jordan, is an algorithm in linear algebra for determining the solutions of a system of linear equations, for determining the rank of a matrix, and for calculating the inverse of an invertible square matrix. When applied to a matrix, Gaussian elemination produces row-echelon form.

History

The method is named after the mathematician Carl Friedrich Gauss, but the method is described by Liu Hui's comments written in 263 A.D. to the Chinese book Jiuzhang suanshu or The Nine Chapters on the Mathematical Art.

Numerical analysis

The computational complexity of Gaussian elimination is O(n3), that is, the number of operations required is proportional to n3 if the matrix size is n-by-n.

This algorithm can be used on a computer for systems with thousands of equations and unknowns. It is, however, numerically unstable, at least on pathological examples; that is, floating-point errors committed throughout the computation are accumulated and may result in results far from the correct solution. For this reason and for reasons of its prohibitive cost on large matrices, iterative methods, generally based on finding a fixed point of a contraction mapping (see Banach fixed point theorem) are generally preferred for larger systems; there also exist specific methods for even larger systems whose coefficients follow a regular pattern. See system of linear equations. Gaussian elimination is, however, a good method for systems of equations over a field where computations are exact, such as finite fields.

Example

Suppose you need to find numbers x, y, and z such that the following three equations are all simultaneously true:

2x+yz=8,
−3xy+2z=−11,
−2x+y+2z=−3.

This is called a system of linear equations for the unknowns x, y, and z. They are called linear because each term is either constant or is a constant times a single variable to the first power. The goal is to transform this system to an equivalent one so that we can easily read off the solution. The operations to transform a system of equations to another, whilst still preserving the solutions are as follows:

  • multiply/divide an equation by a non-zero number
  • switch two equations
  • add a multiple of one equation to another one

The strategy is as follows: eliminate x from all but the first equation, eliminate y from all but the second equation, and then eliminate z from all but the third equation.

In our example, we eliminate x from the second equation by adding 3/2 times the first equation to the second, and then we eliminate x from the third equation by adding the first equation to the third. The result is:

2x+yz=8,
1/2 y+1/2 z=1,
2y+z=5.

Now we eliminate y from the first equation by adding −2 times the second equation to the first, and then we eliminate y from the third equation by adding −4 times the second equation to the third:

2x2z=6,
1/2 y+1/2 z=1,
z=1.

Finally, we eliminate z from the first equation by adding −2 times the third equation to the first, and then we eliminate z from the second equation by adding 0.5 times the third equation to the second:

2x=4,
1/2 y=3/2,
z=1.

We can now read off the solution by dividing: x = 2, y = 3 and z = −1.

This algorithm works generally, also for bigger systems. Sometimes it is necessary to switch two equations: for instance if y had not occurred in the second equation after our first step above, we would have switched the second and third equation and then eliminated y from the first equation. It is possible that the algorithm gets "stuck": for instance if y had not occurred in the second and the third equation after our first step above. In this case, the system does not have a unique solution.

Usually, in practice, one does not deal with the actual systems in terms of equations but instead makes use of the coefficient matrix (which is also suitable for computer manipulations), so doing this, our original system would then look like

and in the end we are left with

or, after dividing the rows by 2, 1/2 and -1, respectively:

Applications

Finding the inverse of a matrix

Suppose A is a square n-by-n matrix and you need to calculate its inverse. The n-by-n identity matrix is augmented to the right of A, which produces an n-by-2n matrix. Then you start the algorithm on that matrix. When the algorithm finishes, the identity matrix will appear on the left; the inverse of A can then be found to the right of the identity matrix.

If the algorithm gets "stuck" as explained above, then A is not invertible.

In practice, inverting a matrix is rarely required. Most of the time, one is really after the solution of a particular system of linear equations.

The general algorithm to compute ranks and bases

The Gaussian elimination algorithm can be applied to any m-by-n matrix A. If we get "stuck" in a given column, we move to the next column. In this way, for example, any 6x9 matrix can be transformed to a matrix that has a reduced row-echelon form like

(the *s are arbitrary entries). Note that the entries above and below and in front of the leading ones are all zero. This echelon matrix T contains a wealth of information about A: the rank of A is 5 since there are 5 non-zero rows in T; the vectorspace spanned by the rows of A has as basis the first, third, forth, seventh and ninth column of A (the rows of the ones in T), and the *'s tell you how the other rows of A can be written as linear combinations of the basis rows.

The Gaussian elimination can be performed over any field. The three elementary operations used in the Gaussian elimination (multiplying rows, switching rows, and adding multiples of rows to other rows) amount to multiplying the original matrix A with invertible m-by-m matrices from the left. In general, we can say:

To every m-by-n matrix A over the field K there exists a uniquely determined invertible m-by-m matrix S and a uniquely determined reduced row-echelon matrix T such that A = ST.

S is the product of the matrices corresponding to the row operations performed.

The formal algorithm to compute T from A follows. We write A[i,j] for the entry in row i, column j in matrix A. The transformation is performed "in place", meaning that the original matrix A is lost and successively replaced by T.

i=1
j=1
while (i <= m and j<= n) do
  # Find pivot in column j, starting in row i:
  max_val = A[i,j]
  max_ind = i
  for k=i+1 to m do
    val = A[k,j]
    if abs(val) > abs(max_val) then
      max_val = val
      max_ind = k
    end_if
  end_for
  if max_val <> 0 then
    switch rows i and max_ind
    divide row i by max_val
    for u = 1 to m do
       if u <> i then
          add - A[u,j] * row i to row u
       end_if
    end_for
    i = i + 1
  end_if
  j = j + 1
end_while

This algorithm differs slightly from the one discussed earlier, because before eliminating a variable, it first exchanges rows to move the entry with the largest absolute value to the "pivot position". Such a pivoting procedure improves the numerical stability of the algorithm; some variants are also in use.

Note that if the field is the real or complex numbers and floating point arithmetic is in use, the comparison "max_val <> 0" should be replaced by "abs(max_val) > eps" for some small, machine-dependent constant eps, since it is never correct to compare floating point numbers to zero.