Term
System of Linear Equations (SLE) |
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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] |
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Term
Solution of a System of Linear Equations (SSLE) |
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Definition
A solution of a system of linear equations of n variables [image] is an ordered list of n 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. |
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Term
Solution Set of A System of Linear Equations (SSSLE) |
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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. |
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Term
Equivalent Systems (ESYS) |
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Definition
Two systems of linear equations are equivalent if their solutions sets are equal. |
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Term
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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.
- Swap the locations of two equations in the list of equations.
- Multiply each term of an equation by a non-zero quantity.
- Multiply each term of one equation by some quantity, add the result to a second equation.
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Term
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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.
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Term
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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] |
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Term
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Definition
A column vector whose entries are all zero.
[image] |
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Term
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Definition
For a system of linear equations the cofficient matrix is the m x n matrix
[image]
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Term
Vector of Constants (VOC) |
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Definition
For a system of linear equations, the vector of constants is the column vector of size m
[image] |
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Term
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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] |
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Term
Matrix Representation of a Linear System (MRLS) |
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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. |
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Term
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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] |
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Term
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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 |
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Term
Row Equivalent Matrices (REM) |
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Definition
Two matrices A and B are row equivalent if one can be obtained from the other by a sequence of row operations. |
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Term
Reduced Row Echelon Form (RREF) |
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Definition
A matrix is in reduced row echelon form if it meest the following conditons:
- Any all zero rows are listed below all non-zero rows.
- The left most non-zero entry of a row is equal to 1
- The left most non-zero entry of a row is the only non-zero entry in its column.
- 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. |
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Term
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Definition
A system of linear equations is consistent if it has at least one solution. Otherwise, the system is called inconsistent. |
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Term
Independent and Dependent Variables (IDV) |
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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. |
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Term
Solutions of Homogeneous Systems (SHS) |
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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]
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Term
Trivial Solution to Homogeneous System of Equations (TSHSE) |
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Definition
Suppose a homogeneous system of linear equations has n variables.
The solution [image] (i.e. x = 0) is called the trivial solution. |
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Term
Null Space of a Matrix (NSM) |
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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). |
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Term
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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. |
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Term
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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.] |
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Term
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Definition
The m x n identity matrix, [image], is defined by
[image]
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Term
Vector Space of Column Vectors (VSCV) |
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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. |
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Term
Column Vector Equality (CEV) |
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Definition
Suppose that [image]. Then [image] and [image] are equal, written [image], if
[image]
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Term
Column Vector Addition (CVA) |
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Definition
Suppose that [image]. The sum of [image] and [image] is the vector [image] defined by
[image] |
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Term
Column Vector Scalar Multiplication (CVSM) |
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Definition
Suppose [image] and [image]. Then the scalar multiple of [image] by [image] is the vector [image] defined by
[image] |
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Term
Linear Combination of Column Vectors (LCCV) |
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Definition
Given n vectors [image] and n scalars [image], their linear combination is the vector [image]. |
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Term
Span of a Set of Column Vectors (SSCV) |
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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)] |
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Relation of Linear Dependence for Column Vectors (RLDCV) |
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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.] |
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Term
Linear Independence of Column Vectors (LICV) |
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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. |
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Term
Complex Conjugate of a Column Vector (CCCV) |
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Definition
Suppose that u is a vector from [image]. Then the conjugate of the vector, [image], is defined by
[image] |
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Term
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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] |
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Term
The Norm of a Vector (NV) |
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Definition
The norm of a vector is the scalar quantity in [image]
[image]
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Term
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Definition
A pair of vectors [image] from [image] are orthogonal if their inner product is zero, [image] |
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Term
Orthogonal Set of Vectors (OSV) |
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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] |
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Term
Standard Unit Vectors (SUV) |
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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.] |
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Term
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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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