Jacobian matrix: Difference between revisions

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Note that for this definition to be correct, it is still necessary that the gradient vectors exist. If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.
Note that for this definition to be correct, it is still necessary that the gradient vectors exist. If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.
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==Definition as a function==
==Definition as a function==
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If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.
If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.


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==Particular cases==
==Particular cases==



Latest revision as of 02:32, 13 May 2012

This article describes an analogue for functions of multiple variables of the following term/fact/notion for functions of one variable: derivative

Importance

The Jacobian matrix is the appropriate notion of derivative for a function that has multiple inputs (or equivalently, vector-valued inputs) and multiple outputs (or equivalently, vector-valued outputs).

Definition at a point

Direct epsilon-delta definition

Definition at a point in terms of gradient vectors as row vectors

Suppose is a vector-valued function with -dimensional inputs and -dimensional outputs. Explicitly, suppose is a function with inputs and outputs . Suppose is a point in the domain of such that is differentiable at for . Then, the Jacobian matrix of at is a matrix of numbers whose row is given by the gradient vector of at .

Explicitly, in terms of rows, it looks like:

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Definition at a point in terms of partial derivatives

Suppose is a vector-valued function with -dimensional inputs and -dimensional outputs. Explicitly, suppose is a function with inputs and outputs . Suppose is a point in the domain of such that is differentiable at for . Then, the Jacobian matrix of at is a matrix of numbers whose entry is given by:

Here's how the matrix looks:

Note that for this definition to be correct, it is still necessary that the gradient vectors exist. If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.

{{#widget:YouTube|id=VCM4RVM09_I}}

Definition as a function

Definition in terms of gradient vectors as row vectors

Suppose is a vector-valued function with -dimensional inputs and -dimensional outputs. Explicitly, suppose is a function with inputs and outputs . Then, the Jacobian matrix of is a matrix of functions whose row is given by the gradient vector of . Explicitly, it looks like this:


Note that the domain of this function is the set of points at which all the s individually are differentiable.

Definition in terms of partial derivatives

Suppose is a vector-valued function with -dimensional inputs and -dimensional outputs. Explicitly, suppose is a function with inputs and outputs . Then, the Jacobian matrix of is a matrix of functions whose entry is given by:

wherever all the s individually are differentiable in the sense of the gradient vectors existing. Here's how the matrix looks:

If the gradient vectors do not exist but the partial derivatives do, a matrix can still be constructed using this recipe but it may not satisfy the nice behavior that the Jacobian matrix does.

{{#widget:YouTube|id=jTmwUMnuUec}}

Particular cases

Case What happens in that case?
is a real-valued function of one variable. The Jacobian matrix is a matrix whose entry is the ordinary derivative.
, is a vector-valued function of one variable. We can think of it as a parametric curve in . The Jacobian matrix is a matrix which, read as a column vector, is the parametric derivative of the vector-valued function.
, is a real-valued function of multiple variables. The Jacobian matrix is a matrix which, read as a row vector, is the gradient vector function.
is a linear or affine map. The Jacobian matrix is the same as the matrix describing (or, if is affine, the matrix describing the linear part of ).
, and we are identifying the spaces of inputs and outputs of . The Jacobian matrix can then be thought of as a linear self-map from the -dimensional space to itself. In this context, we can consider the Jacobian determinant.