English

Revision: Algebra >> Matrices Maths (English Medium) ICSE Class 10 CISCE

Advertisements

Definitions [9]

Definition: Matrix

A matrix is a rectangular arrangement of numbers arranged in rows and columns, enclosed in brackets [ ] or parentheses ( ).

Elements (Entries) of a Matrix

  • Each number in a matrix is called an element (or entry).

Rows and Columns

  • Horizontal lines → rows
  • Vertical lines → columns

Order of a Matrix

  • Order = number of rows × number of columns
  • Written as m × n and read as “m by n”
Definition: Equality of Matrices

Two matrices are equal if and only if:

  1. They have the same order (same number of rows and columns), and
  2. Their corresponding elements are equal.

Example:

\[A=
\begin{bmatrix}
2 & & 3 \\
1 & & 5
\end{bmatrix}\mathrm{and} B=
\begin{bmatrix}
2 & & 3 \\
1 & & 5
\end{bmatrix}\]

Definition: Compatibility of Matrices

Two matrices are said to be comparable if they are of the same order, that is, they have the same number of rows and the same number of columns.

Example:

A = \[\begin{bmatrix}
2 & -3 & 0 \\
5 & 1 & -4
\end{bmatrix}\] \[ B =
\begin{bmatrix}
6 & 7 & 1 \\
8 & 0 & 9
\end{bmatrix}\]

Definition: Transpose of a Matrix

The transpose of a matrix is obtained by interchanging its rows and columns.

  • If a matrix is A, its transpose is denoted by AT

  • If A is of order m × n, then
    AT is of order n × m

  • First row of A becomes first column of AT, and so on.
Definition: Addition of Matrices

Let \[A = [a_{ij}]\] and \[B = [b_{ij}]\] be two matrices of the same order \[m \times n\].

Their sum \[C = A + B\] is defined as the matrix \[[c_{ij}]\] of order \[m \times n\], where

\[c_{ij} = a_{ij} + b_{ij} \text{ for all } i, j.\]
Definition: Subtraction of Matrices

Let \[A = [a_{ij}]\] and \[B = [b_{ij}]\] be matrices of the same order \[m \times n\].

Their difference \[D = A - B\] is defined as the matrix \[[d_{ij}]\] where

\[d_{ij} = a_{ij} - b_{ij} \text{ for all } i, j.\]

Equivalently,

\[A - B = A + (-B)\]
Definition: Matrix Multiplication

Let \[A = [a_{ij}]\] be an \[m \times n\] matrix and \[B = [b_{jk}]\] be an \[n \times p\] matrix.

Then the product C = AB is an \[m \times p\] matrix \[C = [c_{ik}]\], where each entry \[c_{ik}\] is given by:

\[c_{ik} = \sum_{j=1}^{n} a_{ij}b_{jk}\]
Definition: Scalar Multiplication of a Matrix

Let \[A = [a_{ij}]_{m \times n}\] be a matrix and k be a real number (scalar).

Then the scalar multiple of A by k is the matrix kA defined as:

\[kA = [ka_{ij}]_{m \times n}\]

That is, each entry of A is multiplied by the scalar k.

Definition: Negative of a Matrix

The negative of a matrix A, denoted by -A, is defined as the scalar multiple \[-1 \cdot A\].

  • So, if \[A = [a_{ij}]\], then \[-A = [-a_{ij}]\]

  • Adding a matrix to its negative gives the zero matrix: A + (-A) = O

where O is the zero matrix of the same order as A.

Key Points

Key Points: Concept of Matrices
  • Matrix: A rectangular array of elements.

  • Element: An entry inside a matrix.

  • Order: Size of a matrix written as rows × columns.

  • Row: Horizontal set of elements.

  • Column: Vertical set of elements.

  • aij​: Element in the i-th row and j-th column.

Key Points: Types of Matrices
Matrix Type Order Key Property
Row Matrix 1 × n  Only one row
Column Matrix m × 1 Only one column
Square Matrix n × n Rows = Column
Rectangular Matrix m × n (m ≠ n) Rows ≠ Columns
Diagonal Matrix n × n Square; non-diagonal elements = 0 
Scalar Matrix n × n Diagonal; all diagonal elements equal
Identity Matrix n × n Scalar matrix with diagonal = 1
Zero Matrix Any order All elements = 0 
Upper Triangular Matrix n × n (aij = 0) for i > j
Lower Triangular Matrix n × n (aij = 0) for i < j
Strictly Triangular Matrix n × n No diagonal elements
Sub-Matrix Smaller order Must come from a matrix
Key Points: Equality of Matrices
  • Equality of matrices is possible only when the order is the same.

  • Corresponding elements must be compared position by position.

  • If even one corresponding entry differs, the matrices are not equal.

Key Points: Transpose of a Matrix
  • Transpose = interchange rows and columns.

  • If A is \[m \times n\], then A' is \[n \times m\].

  • Standard notation: A' or \[A^T\].

  • Key properties: (A')' = A, (kA)' = kA', (A + B)' = A' + B', (AB)' = B'A'.

Key Points: Addition and Subtraction of Matrices
  • Matrices must be of same order for addition and subtraction.

  • \[A + B = [a_{ij} + b_{ij}]\].

  • A - B = A + (-B).

  • Addition is commutative: A + B = B + A.

  • Addition is associative: (A + B) + C = A + (B + C).

  • Zero matrix is additive identity: A + O = A.

  • Negative of a matrix is additive inverse: \[A + (-A) = O\].

  • If order differs \[\rightarrow\] operation not defined.

Key Points: Matrix Multiplication
  • Matrix multiplication is row-by-column, not term-wise.

  • Product AB exists only if columns of A = rows of B.

  • If A is \[m \times n\] and B is \[n \times p\], then AB is \[m \times p\].

  • In general, \[AB \neq BA\], and sometimes one product may not even be defined.

  • Matrix multiplication is associative and distributive over addition.

  • Identity matrix acts as a multiplicative identity: AI = IA = A.

  • Zero matrix absorbs multiplication: AO = OA = O.

Key Points: Scalar Multiplication
  • Scalar multiplication: \[kA = [ka_{ij}]\].

  • Negative of a matrix: -A = (-1)A.

  • Order of matrix does not change after scalar multiplication.

  • k(A + B) = kA + kB.

  • (k + l)A = kA + lA.

  • k(lA) = (kl)A.

  • \[0 \cdot A = O\], \[1 \cdot A = A\].

Advertisements
Advertisements
Advertisements
Share
Notifications

Englishहिंदीमराठी


      Forgot password?
Use app×