Quadratic function of multiple variables: Difference between revisions
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| [[local maximum value]] and points of attainment || If the matrix <math>A</math> is negative definite, then <math>c - \frac{1}{4}\vec{b}^TM\vec{b}</math>, attained at <math>\frac{-1}{2}A^{-1}\vec{b}</math> (also applies if it's negative semidefinite)<br>Otherwise, no local maximum value | | [[local maximum value]] and points of attainment || If the matrix <math>A</math> is negative definite, then <math>c - \frac{1}{4}\vec{b}^TM\vec{b}</math>, attained at <math>\frac{-1}{2}A^{-1}\vec{b}</math> (also applies if it's negative semidefinite)<br>Otherwise, no local maximum value | ||
|} | |} | ||
==Differentiation== | |||
===Partial derivatives and gradient vector=== | |||
The [[partial derivative]] with respect to the variable <math>x_i</math>, and therefore also the <math>i^{th}</math> coordinate of the [[gradient vector]], is given by: | |||
<math>\frac{\partial f}{\partial x_i} = \left(\sum_{j=1}^n a_{ij}x_j\right) + b_i</math> | |||
==Cases== | ==Cases== | ||
Revision as of 18:15, 11 May 2014
Definition
Consider variables . A quadratic function of the variables is a function of the form:
In vector form, if we denote by the column vector with coordinates , then we can write the function as:
where is the matrix with entries and is the column vector with entries .
Key data
| Item | Value |
|---|---|
| default domain | the whole of |
| range | If the matrix is not positive semidefinite or negative semidefinite, the range is all of . If the matrix is positive semidefinite, the range is where is the minimum value. If the matrix is negative semidefinite, the range is where is the maximum value. |
| local minimum value and points of attainment | If the matrix is positive definite, then , attained at (also applies if it's positive semidefinite) Otherwise, no local minimum value |
| local maximum value and points of attainment | If the matrix is negative definite, then , attained at (also applies if it's negative semidefinite) Otherwise, no local maximum value |
Differentiation
Partial derivatives and gradient vector
The partial derivative with respect to the variable , and therefore also the coordinate of the gradient vector, is given by:
Cases
Positive definite case
First, we consider the case where is a positive definite matrix. In other words, we can write in the form:
where is a invertible matrix.
We can "complete the square" for this function:
In other words:
This is minimized when the expression whose norm we are measuring is zero, so that it is minimized when we have:
Simplifying, we obtain that we minimum occurs at:
Moreover, the value of the minimum is: