Hessian matrix: Difference between revisions
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* The Hessian matrix of <math>f</math> at any point is a symmetric matrix, i.e., its <math>(ij)^{th}</math> entry equals its <math>(ji)^{th}</matH> entry. This follows from [[Clairaut's theorem on equality of mixed partials]]. | * The Hessian matrix of <math>f</math> at any point is a symmetric matrix, i.e., its <math>(ij)^{th}</math> entry equals its <math>(ji)^{th}</matH> entry. This follows from [[Clairaut's theorem on equality of mixed partials]]. | ||
* We can think of the Hessian matrix as '''the''' second derivative of the function, i.e., it is a matrix describing the second derivative. | |||
* <math>f</math> is twice differentiable as a function. Hence, the Hessian matrix of <math>f</math> is the same as the [[Jacobian matrix]] of the [[gradient vector]] <math>\nabla f</math>, where the latter is viewed as a vector-valued function. | * <math>f</math> is twice differentiable as a function. Hence, the Hessian matrix of <math>f</math> is the same as the [[Jacobian matrix]] of the [[gradient vector]] <math>\nabla f</math>, where the latter is viewed as a vector-valued function. | ||
Note that the | Note that the final conclusion actually only requires the existence of the [[gradient vector]], hence it holds even if the second-order partials are not continuous. |
Revision as of 23:47, 23 April 2012
Definition at a point
For a function of two variables at a point
Suppose is a real-valued function of two variables and is a point in the domain of . Suppose all the four second-order partial derivatives exist at , i.e., the two pure second-order partials exist, and so do the two second-order mixed partial derivatives and . Then, the Hessian matrix of at , denoted , is a matrix of real numbers defined as follows:
For a function of multiple variables at a point
Suppose is a real-valued function of multiple variables . Suppose is a point in the domain of . In other words, are real numbers and the point has coordinates . Suppose, further, that all the second-order partials (pure and mixed) of with respect to these variables exist at the point . Then, the Hessian matrix of at , denoted , is a matrix of real numbers defined as follows:
The entry (i.e., the entry in the row and column) is . This is the same as . Note that in the two notations, the order in which we write the partials differs because the convention differs (left-to-right versus right-to-left).
The matrix looks like this:
Definition as a function
For a function of two variables
Suppose is a real-valued function of two variables . The Hessian matrix of , denoted , is a matrix-valued function that sends each point to the Hessian matrix at that point, if that matrix is defined. It is defined as:
In the point-free notation, we can write this as:
For a function of multiple variables
Suppose is a function of variables . The Hessian matrix of , denoted , is a matrix-valued function that sends each point to the Hessian matrix at that point, if the matrix is defined. It is defined as:
In the point-free notation, we can write it as:
Under continuity assumptions
If we assume that all the second-order partials of are continuous functions everywhere, then the following happens:
- The Hessian matrix of at any point is a symmetric matrix, i.e., its entry equals its entry. This follows from Clairaut's theorem on equality of mixed partials.
- We can think of the Hessian matrix as the second derivative of the function, i.e., it is a matrix describing the second derivative.
- is twice differentiable as a function. Hence, the Hessian matrix of is the same as the Jacobian matrix of the gradient vector , where the latter is viewed as a vector-valued function.
Note that the final conclusion actually only requires the existence of the gradient vector, hence it holds even if the second-order partials are not continuous.