Scilab Website | Contribute with GitLab | Mailing list archives | ATOMS toolboxes
Scilab Online Help
5.3.2 - Français

Change language to:
English - 日本語 - Português

Please note that the recommended version of Scilab is 2025.0.0. This page might be outdated.
However, this page did not exist in the previous stable version.

Aide Scilab >> Optimisation et Simulation > numdiff

numdiff

numerical gradient estimation

Calling Sequence

g=numdiff(fun,x [,dx])

Arguments

fun

an external, Scilab function or list. See below for calling sequence, see also external for details about external functions.

x

vector, the argument of the function fun

dx

vector, the finite difference step. Default value is dx=sqrt(%eps)*(1+1d-3*abs(x))

g

vector, the estimated gradient

Description

given a function fun(x) from R^n to R^p computes the matrix g such as

g(i,j) = (df_i)/(dx_j)

using finite difference methods. Uses an order 1 formula.

Without parameters, the function fun calling sequence is y=fun(x), and numdiff can be called as g=numdiff(fun,x). Else the function fun calling sequence must be y=fun(x,param_1,pararm_2,..,param_q). If parameters param_1,param_2,..param_q exist then numdiff can be called as follow g=numdiff(list(fun,param_1,param_2,..param_q),x).

See the derivative with respect to numerical accuracy issues and comparison between the two algorithms.

Examples

// example 1 (without parameters)
// myfun is a function from R^2 to R :   (x(1),x(2)) |--> myfun(x) 
function f=myfun(x)
  f=x(1)*x(1)+x(1)*x(2)
endfunction

x=[5 8]
g=numdiff(myfun,x)

// The exact gradient (i.e derivate belong x(1) :first component and derivate belong x(2): second component) is  
exact=[2*x(1)+x(2)  x(1)]

//example 2 (with parameters)
// myfun is a function from R to R:  x(1) |--> myfun(x) 
// myfun contains 3 parameters, a, b, c
function f=myfun(x, a, b, c)
  f=(x+a)^c+b
endfunction

a=3; b=4; c=2;
x=1
g2=numdiff(list(myfun,a,b,c),x)

// The exact gradient, i.e derivate belong x(1), is :
exact2=c*(x+a)^(c-1)

See Also

  • optim — non-linear optimization routine
  • derivative — approximate derivatives of a function
  • external — Objet Scilab, fonction externe ou routine
<< lsqrsolve Optimisation et Simulation optim >>

Copyright (c) 2022-2024 (Dassault Systèmes)
Copyright (c) 2017-2022 (ESI Group)
Copyright (c) 2011-2017 (Scilab Enterprises)
Copyright (c) 1989-2012 (INRIA)
Copyright (c) 1989-2007 (ENPC)
with contributors
Last updated:
Thu May 12 11:44:58 CEST 2011