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# numderivative

approximate derivatives of a function (Jacobian or Hessian)

### Calling Sequence

J = numderivative(f, x) J = numderivative(f, x, h) J = numderivative(f, x, h, order) J = numderivative(f, x, h, order, H_form) J = numderivative(f, x, h, order, H_form, Q) [J, H] = numderivative(...)

### Arguments

- f
a function or a list, the function to differenciate.

- x
a n-by-1 or 1-by-n vector of doubles, real, the point where to compute the derivatives.

- h
a 1-by-1 or n-by-1 vector of doubles, the step used in the finite difference approximations. If

`h`

is not provided, then the default step is computed depending on`x`

and the`order`

. If`h`

is a 1-by-1 matrix, it is expanded to the same size as`x`

.- order
a 1-by-1 matrix of doubles, integer, positive, the order of the finite difference formula (default

`order=2`

). The available values of`order`

are 1, 2 or 4.- H_form
a string, the form in which the Hessian will be returned (default

`H_form="default"`

).The available values are "default", "blockmat" or "hypermat". See the section "The shape of the Hessian" below for details on this option.

- Q
a real matrix of doubles, modifies the directions of differenciation (default is

`Q=eye(n,n)`

). The matrix`Q`

is expected to be orthogonal. Q provides the possibility to remove the arbitrariness of using the canonical basis to approximate the derivatives of a function.- J
a m-by-n matrix of doubles, the approximated Jacobian. The row

`J(k, :)`

approximates the gradient of`fk`

, for`k = 1, 2, ..., m`

.- H
a matrix of doubles, the approximated Hessian. The elements of

`H`

approximate the second-order partial derivatives of`f`

.

### Description

Computes the approximated Jacobian and Hessian matrices of a function with finite differences.

The function `f`

takes as
input argument `x`

, a `n-by-1`

vector,
and returns `y`

, a `m-by-1`

vector.
In the following, the k-th component of `f`

is denoted by `fk`

and the Hessian matrix of
`fk`

is denoted by `Hk`

,
for `k = 1, 2, ..., m`

.

Any optional argument equal to the empty matrix `[]`

is replaced by its default value.

In general, the `order=1`

formula provides the
largest error (least accurate), the `order = 2`

formula provides an average
error and the `order=4`

formula provides the lowest error (most accurate).
However, there are cases for which this is not true: see the section "Accuracy issues" below
for more details on this topic.

The second derivatives are computed by composition of first order derivatives.

### The function

The function `f`

must have the following header:

y = f (x)

where

- x
a n-by-1 vector of doubles, the current point

- y
a m-by-1 vector of doubles, the function value

It might happen that the function requires additionnal arguments to be evaluated.
In this case, we can use the following feature.
The argument `f`

can also be the list `(myfun, a1, a2, ...)`

.
In this case, `myfun`

, the first element in the list, must be a function and must
have the header:

y = myfun (x, a1, a2, ...)

`a1, a2, ...`

are automatically appended at the end of the calling sequence.### The shape of the Hessian

The `H_form`

option changes the dimensions of the output argument
`H`

.
This manages the general case where `m`

is different from `1`

,
that is, when there are several functions to differenciate at the same time.

The possible values of `H_form`

are:

- H_form = "default":
H is a

`m-by-(n^2)`

matrix; in this form, the row`H(k, :)`

contains`Hk`

:H(k, :) == Hk(:)'

- H_form = "blockmat":
H is a

`(mn)-by-n`

matrix: the`n-by-n`

Hessian matrices of each component of`f`

are stacked row-by-row, that is:H == [H1 ; H2 ; ... ; Hm]

- H_form = "hypermat":
H is a n-by-n matrix for

`m=1`

, and a n-by-n-by-m hypermatrix otherwise. The matrix`H(:, :, k)`

is the Hessian matrix of the k-th component of`f`

, i.e.H(:, :, k) == Hk

### Performances

If the problem is correctly scaled, increasing the order of the finite difference formula may reduce
the error of approximation but requires more function evaluations.
The following list presents the number of function evaluations required to
compute the Jacobian depending on the order of the formula and the dimension of `x`

,
denoted by `n`

:

`order = 1`

, the number of function evaluations is`n+1`

,`order = 2`

, the number of function evaluations is`2n`

,`order = 4`

, the number of function evaluations is`4n`

.

Computing the Hessian matrix requires the square of the number of function evaluations, as detailed in the following list.

`order = 1`

, the number of function evaluations is`(n+1)^2`

(total is`(n+1)^2+n+1`

),`order = 2`

, the number of function evaluations is`4n^2`

(total is`4n^2+2n`

),`order = 4`

, the number of function evaluations is`16n^2`

(total is`16n^2+4n`

).

### Examples

// The function to differenciate function y=f(x) f1 = sin(x(1)*x(2)) + exp(x(2)*x(3)+x(1)) f2 = sum(x.^3) y = [f1; f2] endfunction // The exact gradient function [g1, g2]=exactg(x) g1(1) = cos(x(1)*x(2))*x(2) + exp(x(2)*x(3)+x(1)) g1(2) = cos(x(1)*x(2))*x(1) + exp(x(2)*x(3)+x(1))*x(3) g1(3) = exp(x(2)*x(3) + x(1))*x(2) g2(1) = 3*x(1)^2 g2(2) = 3*x(2)^2 g2(3) = 3*x(3)^2 endfunction // The exact Hessian function [H1, H2]=exactH(x) H1(1, 1) = -sin(x(1)*x(2))*x(2)^2 + exp(x(2)*x(3)+x(1)) H1(1, 2) = cos(x(1)*x(2)) - sin(x(1)*x(2))*x(2)*x(1) + exp(x(2)*x(3)+x(1))*x(3) H1(1, 3) = exp(x(2)*x(3)+x(1))*x(2) H1(2, 1) = H1(1, 2) H1(2, 2) = -sin(x(1)*x(2))*x(1)^2 + exp(x(2)*x(3)+x(1))*x(3)^2 H1(2, 3) = exp(x(2)*x(3)+x(1)) + exp(x(2)*x(3)+x(1))*x(3)*x(2) H1(3, 1) = H1(1, 3) H1(3, 2) = H1(2, 3) H1(3, 3) = exp(x(2)*x(3)+x(1))*x(2)^2 // H2(1, 1) = 6*x(1) H2(1, 2) = 0 H2(1, 3) = 0 H2(2, 1) = H2(1, 2) H2(2, 2) = 6*x(2) H2(2, 3) = 0 H2(3, 1) = H2(1, 3) H2(3, 2) = H2(2, 3) H2(3, 3) = 6*x(3) endfunction // Compute the approximate Jacobian, the Hessian x = [1; 2; 3]; J = numderivative(f, x) [J, H] = numderivative(f, x) // Compare with exact derivatives [g1, g2] = exactg(x); Jexact = [g1'; g2'] [H1, H2] = exactH(x); Hexact = [H1(:)'; H2(:)'] // Configure the step J = numderivative(f, x, 1.e-1) // Configure the order J = numderivative(f, x, [], 4) // Configure Hessian shapes [J, H] = numderivative(f, x, [], [], "blockmat") [J, H] = numderivative(f, x, [], [], "hypermat") // Configure Q n = 3; Q = qr(rand(n, n)) J = numderivative(f, x, [], [], [], Q) // Test order 1, 2 and 4 formulas. // For the order 4 formula, there are some entries in H // which are computed as nonzero. [g1, g2] = exactg(x); [H1, H2] = exactH(x); Jexact = [g1'; g2']; Hexact = [H1(:)'; H2(:)']; for i = [1, 2, 4] [J, H] = numderivative(f, x, [], i); dJ = floor(min(assert_computedigits(J, Jexact))); dH = floor(min(assert_computedigits(H, Hexact))); mprintf("order = %d, dJ = %d, dH = %d \n", i, dJ, dH); end

### Passing extra parameters

In the following example, we use a function which requires the extra-argument
`p`

.
Hence, we use the feature that the argument `f`

can be a list, where the first argument is the function
`G`

and the remaining elements are automatically passed
to the function.

### The Taylor formula

If `H`

is given in its default form, then the Taylor series of
`f(x)`

up to terms of second order is given by:

In the following script, we check this formula with numerical differences.

// The function to differenciate function y=f(x) f1 = sin(x(1)*x(2)) + exp(x(2)*x(3)+x(1)) f2 = sum(x.^3) y = [f1; f2] endfunction x = [1; 2; 3]; dx = 1e-3*[1; 1; -1]; [J, H] = numderivative(f, x); f(x+dx) f(x+dx)-f(x) f(x+dx)-f(x)-J*dx f(x+dx)-f(x)-J*dx-1/2*H*(dx .*. dx)

In the following example, we use a function which requires three extra-arguments
`A`

, `p`

and `w`

.

### Accuracy issues

When the step `h`

is not provided, the `numderivative`

function tries to compute a step which provides a sufficient accuracy.
This step depends on the degree of the derivative (Jacobian or Hessian),
the order of the formula and the point `x`

.
More precisely, if `x`

is nonzero,
then the default step `h`

is a vector with the
same size as `x`

, scaled with the absolute value
of `x`

.

In the following example, we compute the derivative of the square root function. The following script plots a graph which represents the relative error of the numerical derivative depending on the step. We can see that there is an optimal step which minimizes the relative error.

// Its exact derivative function y=mydsqrt(x) y = 0.5 * x^(-0.5) endfunction x = 1.0; n = 1000; logharray = linspace (-16, 0, n); for i = 1:n h = 10^(logharray(i)); expected = mydsqrt(x); computed = numderivative (sqrt, x, h); relerr = abs(computed - expected) / abs(expected); logearray (i) = log10 (relerr); end scf(); plot (logharray, logearray); xtitle("Relative error of numderivative (x = 1.0)", .. "log(h)", "log(RE)");

The strategy in `numderivative`

provides a sufficient accuracy in many
cases, but can fail to be accurate in some cases.
In fact, the optimal step also depends on the function value `f(x)`

and is second derivative, both of which are unknown at the time where the
default step is computed.
See "Practical optimization", by Gill, Murray and Wright, Academic Press, 1981,
for more details on this topic.
The relevant sections are "4.6.1. Finite-difference Approximations to First
Derivatives" and "8.6 Computing finite differences".

### History

Version | Description |

5.5.0 | Function `numderivative` introduced. |

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