Unit Two Review

Matrix Algebra

Review of terms:

·  Nonsingular matrix: an nxn matrix A such that there is an nxn matrix B for which AB = BA = I where I is the identity matrix. B is called the inverse of the matrix A and is usually denoted by . Another equivalent term is an invertible matrix.

·  Singular matrix: an nxn matrix A that does not have an inverse; that is, you cannot find an nxn matrix for which AB = BA = I where I is the identity matrix.

·  Transpose of a matrix: The transpose of a matrix A is a matrix B whose rows are the columns of the matrix A.

·  Symmetric matrix: an nxn matrix A for which .

·  Elementary matrix: an nxn matrix which is obtained from the identity matrix by the application of one elementary operation.

·  Upper (lower) triangular matrix: an matrix for which the entries below (above) the diagonal are equal to zero.

·  Minor of an entry: the minor of an entry is the submatrix obtained from A by deleting the i-th row and the j-th column.

·  Cofactor of an entry: the cofactor of an entry is the =).

·  Cofactor matrix: an matrix obtained from a given matrix A by replacing each entry by its corresponding cofactor.

·  Adjoint of a matrix A: an nxn matrix which is equal to the transpose of the cofactor matrix.

·  LU-decomposition: an algorithm by which one can write a given matrix A as the product of a lower triangular and an upper triangular matrices.

Review of some facts:

·  The inverse of a matrix is unique.

·  Solution set of a system of linear equations: the system has a unique solution if and only if the inverse of the coefficient matrix A exists. The solution is given by .

·  The following statements are equivalent for an nxn matrix A:

o  inverse A exists

o  A is row equivalent to the identity matrix

o  has a unique solution

Cramer’s Rule: The solution of a systemwhere A is invertible (nonsingular) is given by = , where is the matrix obtained by replacing the i-th column of A with b.

LU-decomposition and systems of linear equations: If A admits such an LU-

decomposition, then one can solve two triangular sparse systems using forward elimination and using back substitution.

Review Questions:

1.  Give an example of two square matrices to show that.

2.  If the systemhas infinitely many solutions, does the inverse of the matrix A exist?

3.  If A is a 3x3 matrix whose, find:

det(3A) ; det();

det (Adj(A)), where Adj(A) is the adjoint matrix corresponding to A; and

det(C), where C is the cofactor matrix corresponding to A.

4.  If a matrix A is row equivalent to the identity matrix, describe the solution set of the system.

5.  For what values of x does the matrix:

have an inverse?

6.  Find the cofactor matrix of the matrix:

7.  Find the adjoint matrix of the matrix A:

and deduce the inverse of the matrix.

8. Find the LU decomposition of the matrix A:

Use this decomposition to solve the system where .