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We begin our treatment of linear operators, also known as transformations. They can be thought as extensions of functionals that map into arbitrary vector spaces rather than a scalar space.
Definition 1 Let and be be linear vector spaces and . A rule which associates every element in with an element is said to be a transformation from with domain .
We have defined because the transformation may only be defined for some subset of .
Definition 2 A transformation where X and Y are vector spaces over a scalar set , is said to be linear if for every and all scalars ,
A common type of linear transformation is the transformation . In this case, is an matrix with real-valued entries (i.e., ). There are a variety of linear transformations that arise in practice, producing equations of the form , with and , where and are linear vector spaces. For example, the equation
may be written in operator notation as , where is the operator
Often, we will simply write .
Definition 3 Let , be normed vector spaces. A linear operator is bounded if there exists a constant such that for all . The smallest M that satisfies this condition is the norm of :
Geometrically, the operator norm measures the maximum extent transforms the unit circle. Thus, bounds the amplifying power of the operator .
Operators possess many properties that are shared with functionals, with similar proofs.
Definition 4 A linear operator is continuous on if it is continuous at any point .
Theorem 1 A linear operator is bounded if and only if it is continuous.
Definition 5 The sum of two linear operators and is defined as . Similarly, the scaling of a linear operator is defined as . Both resulting operators are linear as well.
We can also extend the definition of the dual space to operators.
Definition 6 The normed space of all bounded linear operators from is denoted
Are these spaces complete?
Theorem 2 Let be normed linear spaces. If is a complete space then is complete.
Much of the terminology for operators is drawn from matrices.
Definition 7 Let be a linear vector space. The operator given by for all is known as the identity operator , and .
Definition 8 Let and be linear operators. The composition of these two operators is called a product operator .
Definition 9 An operator is injective (or one-to-one ) if for each there exists at most one such that . In other words, if then .
Definition 10 An operator is surjective (or onto ) if for all there exists an such that .
Definition 11 An operator is bijective if it is injective and surjective.
Lemma 1 If is a bijective operator, then there exists a transformation . such that for all .
Note that the lemma above implies . Thus, we say that is invertible with inverse .
Definition 12 An operator is non-singular if it has an inverse in ; otherwise is singular .
In other words, if a transformation is non-singular there exists a transformation such that . This extends the concept of singularity from matrices to arbitrary operators.
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