This lecture provides an informal introduction to matrices and vectors.
A matrix is a two-dimensional array that has a fixed number of rows and columns and contains a number at the intersection of each row and column.
A matrix is usually delimited by square brackets.
Example
Here is an example of a matrix having two rows and two
columns:
If a matrix has
rows and
columns, we say that it has dimension
,
or that it is a
matrix.
Example
The
matrixhas
rows and
columns. So, we say that
is a
matrix.
The numbers contained in a matrix are called entries of the matrix (or elements, or components).
If
is a matrix, the entry at the intersection of row
and column
is usually denoted by
(or
).
We say that it is the
-th
entry of
.
Example
Let
be a
matrix defined as
follows:
The
element of
at the intersection of the third row and the first column, that is, its
-th
entry
is
If a matrix has only one row or only one column it is called a vector.
A matrix having only one row is called a row vector.
Example
The
matrix
is
a row vector because it has only one row.
A matrix having only one column is called a column vector.
Example
The
matrix
is
a column vector because it has only one column.
A matrix having only one row and one column is called a scalar.
Example
The
matrix
is
a scalar. In other words, a scalar is a single number.
Equality between matrices is defined in the obvious way.
Two
matrices
and
having the same dimension are said to be equal if and only if
all their corresponding elements are equal to each
other:
A matrix
is a zero matrix if all its elements are equal to zero, and
we write
Example
If
is a
matrix and
,
then
A
matrix is called a square matrix if the number of its rows is
the same as the number of its columns, that is,
.
Example
The
matrix
is
a square matrix.
Example
The
matrix
is
a square matrix.
Let
be a square matrix.
The diagonal (or main diagonal of
)
is the set of all entries
such that
.
The elements belonging to the diagonal are called diagonal elements, and all the other entries are called off-diagonal.
Example
Let
be the
matrix defined
by
All
off-diagonal entries of
are equal to
,
while the three diagonal elements are equal to
,
,
and
,
respectively.
A square matrix is called an identity matrix if all its
diagonal elements are equal to
and all its off-diagonal elements are equal to
.
It is usually indicated by the letter
.
Example
The
matrix
is
the
identity matrix.
If
is a
matrix, its transpose, denoted by
,
is the
matrix such that the
-th
element of
is equal to the
-th
element of
for
any
and
satisfying
and
.
In other words, the columns of
are equal to the rows of
(equivalently, the rows of
are equal to the columns of
).
Example
Let
be the
matrix defined by
Its
transpose
is the following
matrix:
Example
Let
be the
matrix defined by
Its
transpose
is the following
matrix:
A square matrix is said to be symmetric if it is equal to its transpose.
Example
Let
be the
matrix defined by
Its
transpose
is the following
matrix:
which
is equal to
.
Therefore,
is symmetric.
Below you can find some exercises with explained solutions.
Let
be a
matrix defined
by
Find its transpose.
The transpose
is a matrix such that its columns are equal to the rows of
:
Let
be a
column vector defined
by
Show that its transpose is a row vector.
The transpose
is a matrix such that its rows are equal to the columns of
.
But
has only one column, which implies that
has only one row. Therefore, it is a row
vector:
Let
be a
matrix defined
by
Is it symmetric?
is symmetric if it is equal to its transpose. The transpose of
is
which
is not equal to
.
Therefore,
is not symmetric.
Please cite as:
Taboga, Marco (2021). "Vectors and matrices", Lectures on matrix algebra. https://www.statlect.com/matrix-algebra/vectors-and-matrices.
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