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Linear Algebra Definintions
Definitions from 'A First Course in LInear Algebra' by Robert A. Beezer
39
Mathematics
Undergraduate 1
07/10/2014

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Term
System of Linear Equations (SLE)
Definition

A system of linear equations is a collection of m equations in the variable quantities [image] of the form

[image]

[image]

[image]

[image]

 

where [image]

Term
Solution of a System of Linear Equations (SSLE)
Definition

A solution of a system of linear equations of n variables [image] is an ordered list of complex numbers, [image], such that if we substitute [image] then for every equation of the system, the left side will equal the right side i.e. each equation is true simultaneously.

Term
Solution Set of A System of Linear Equations (SSSLE)
Definition

A solution set of a system of linear equations is the set that contains every solution to the system. A solution set can be empty or infinite.

Term
Equivalent Systems (ESYS)
Definition

Two systems of linear equations are equivalent if their solutions sets are equal.

Term
Equation Operations (EO)
Definition

Given a system of linear equations, the following three operations will transform the system into a different one, and each operation is known as an equation operation.

  1. Swap the locations of two equations in the list of equations.
  2. Multiply each term of an equation by a non-zero quantity.
  3. Multiply each term of one equation by some quantity, add the result to a second equation.
Term
Matrix (M)
Definition

An m x n matrix is a rectangular layout of numbers from C having rows m and columns n.

 

For a matrix A, the notation [image] (or [image]) refers to the complex number in row i, column j of A.

 

Term
Column Vector (CV)
Definition

A column vector (often just called a vector) of size m is an ordered list of m numbers written vertically from top to bottom. Denoted as [image], etc. somestimes as [image].

An entry in a vector is denoted as [image]

 

[image]

Term
Zero Column Vector (ZCV)
Definition

A column vector whose entries are all zero.

 

[image]

Term
Coefficient Matrix (CM)
Definition

For a system of linear equations the cofficient matrix is the m x n matrix

 

[image]

 

Term
Vector of Constants (VOC)
Definition

For a system of linear equations, the vector of constants is the column vector of size m

[image]

Term
Solution Vector (SOLV)
Definition

For a system of linear equations, the solution vector is the column vector of size n. (It can also double as a solution set).

 

[image]

Term
Matrix Representation of a Linear System (MRLS)
Definition

If A is a coefficient matrix of a system of linear equations and b is the vector of constants, then LS(A,b) is the matrix representation of a linear system.

Term
Augmented Matrix (AM)
Definition

Suppose we have a system of m equations in n variables with coefficient matrix A and vector of constants b. Then the augmented matrix is the m x (n + 1) matrix whose first n columns are the columns of A and whose last column (n + 1) is the column vector b. This matrix will be written as (A|b).

[1 1 1 1 | 6]
[1 -4 0 0 | 0]
[4 4 2 2 | 2]
Term
Row Operations (RO)
Definition

There are three row operations (similar to Equation Operations).

 

[image]   swap rows

[image]       multiply row by a scalar

[image]   multiply row i by a scalar and add the

           result to row j

Term
Row Equivalent Matrices (REM)
Definition

Two matrices A and B are row equivalent if one can be obtained from the other by a sequence of row operations.

Term
Reduced Row Echelon Form (RREF)
Definition

A matrix is in reduced row echelon form if it meest the following conditons:

  1. Any all zero rows are listed below all non-zero rows.
  2. The left most non-zero entry of a row is equal to 1
  3. The left most non-zero entry of a row is the only non-zero entry in its column.
  4. For any two different left most non-zero entries, one in row i column j, the other in row s, column t. If s > i, then t > j.

A column containing a leading 1 is called a pivot column. The number of non-zero rows  is represented by r and is also the number of pivot columns.

 

The set of column indices for the pivot columns will be denoted by [image] where [image] while the columns that are not pivots will be denoted by [image] where [image].

 

Example:


[image]

There are 3 pivot columns: 1, 2 and 4.

There are 2 free columns: 3 and 5.

Term
Consistent System (CS)
Definition

A system of linear equations is consistent if it has at least one solution. Otherwise, the system is called inconsistent.

Term
Independent and Dependent Variables (IDV)
Definition

Suppose A is the augmented matrix of a consistent system of linear equations and B is a row-equivalent matrix in row-reduced echelon form. Suppose j is the index of a pivot column of B. Then the variable xj is dependent. A variable that is not dependent is called independent or free.

Term
Solutions of Homogeneous Systems (SHS)
Definition

A system of  linear equations, LS(A,b), is homogeneous if the vector of constants is the zero-vector, in other words, if b=0.



[homogeneous: composed of parts or elements that are all of the same kind]

Term
Trivial Solution to Homogeneous System of Equations (TSHSE)
Definition

Suppose a homogeneous system of linear equations has n variables.

 

The solution [image] (i.e. x = 0) is called the trivial solution.

Term
Null Space of a Matrix (NSM)
Definition

The null space of a matrix A, denoted by N(A), is the set of all the vectors that are solutions to the homogeneous system LS(A,0).

Term
Square Matrix (SQM)
Definition

A matrix with m rows and n columns is square if m=n. In this case, we say the matrix has size n. To emphasize a situation when the matrix is not square we will call it rectangular.

Term
Nonsingular Matrix (NM)
Definition

Suppose A is a square matrix. Supose further that the solution set to the homogeneous linear system of equations LS(A,b) is {0}, in other words, the system has a trivial solution. Then we say tha A is a nonsingular matrix. Otherwise, we say A is a singular matrix.

 

[The terms singular and nonsingular only apply to square matrices and only to matrices, not systems of linear equations.]

Term
Identity Matrix (IM)
Definition

The m x n identity matrix, [image], is defined by

 

[image]

 

 

Term
Vector Space of Column Vectors (VSCV)
Definition

The vector space [image] is the set of all column vectors of size m with entries from the set of complex numbers.

 

When a set similar to this is defined using only column vectors where all the entries are from the real numbers it is written [image] and is known as Euclidean m-space.

Term
Column Vector Equality (CEV)
Definition

Suppose that [image]. Then [image] and [image] are equal, written [image], if

[image]

 

 

 

Term
Column Vector Addition (CVA)
Definition

Suppose that [image]. The sum of [image] and [image] is the vector [image] defined by

 

[image]

Term
Column Vector Scalar Multiplication (CVSM)
Definition

Suppose [image] and [image]. Then the scalar multiple of [image] by [image] is the vector [image] defined by

 

[image]

Term
Linear Combination of Column Vectors (LCCV)
Definition

Given n vectors [image] and n scalars [image], their linear combination is the vector [image].

Term
Span of a Set of Column Vectors (SSCV)
Definition

Given a set of vectors [image], their span, (S), is the set of all possible linear combinations of [image]. Symbolically,

[image]

[A span is a construction that begins with a finite collection of vectors S (of size p) from which is built the description of an infinite set (S)]

Term
Relation of Linear Dependence for Column Vectors (RLDCV)
Definition

Given a set of vectors [image] a true statement of the form

 

[image]

 

is a relation of linear dependence on S. If this statement is formed in a trivial fashion i.e.

[image]

then we say it is the trivial relation of linear dependence.

 

[NOTE that the relation of linear dependence is an equation though most of it is a linear combination.]

Term
Linear Independence of Column Vectors (LICV)
Definition

The set of vectors [image] is linearly independent if there is a relation of linear dependence on S that is not trivial. In the case where the only relation of linear dependence on S is the trivial one, the S is a linearly independent set of vectors.

 

Linear independence is a property of a set of vectors.

Term
Complex Conjugate of a Column Vector (CCCV)
Definition

Suppose that is a vector from [image]. Then the conjugate of the vector, [image], is defined by

 

[image]

Term
Inner Product (IP)
Definition

Given the vectors [image] the inner product of  u and v is the scalar quantity in [image]

 

[image]

 

Note: the notation for the inner product operation, [image], uses the same left and right angle brackets used for a spanning set, [image]

Term
The Norm of a Vector (NV)
Definition

The norm of a vector is the scalar quantity in [image]

 

[image]

 

Term
Orthogonal Vectors (OV)
Definition

A pair of vectors [image] from [image] are orthogonal if their inner product is zero, [image]

Term
Orthogonal Set of Vectors (OSV)
Definition

Suppose that [image] is a set of vectors from [image]. Then S is an orthogonal set if every pair of different vectors from S is orthogonal, that is [image]

Term
Standard Unit Vectors (SUV)
Definition

Let [image] denote the column vectors defined by

[image]

 

Then the set [image] is the set of standard unit vectors.


[This is essentially the definition of an Identity Matrix, [image]. [image] is the index to a pivot column in an m x n matrix.]

Term
Orthonormal Set (ONS)
Definition

Suppose [image] is an orthogonal set of vectors such that [image] for all [image]. Then S is an orthonormal set.

 

[Multiply each vector in the orthogonal set by the reciprocal of its norm, [image], and the resulting vector will have a norm of 1. The scaling does not effect the orthogonal properties of the original set.]

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