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optimsimplex_gradientfv

Returns the simplex gradient of the function.

Syntax

g = optimsimplex_gradientfv(opt, [fun, [method]])
[g, data] = optimsimplex_gradientfv(opt, fun, method, data)

Argument

opt

The current simplex object of TSIMPLEX type (tlist).

fun

The function to compute at vertices (optional).

The fun function is expected to have the following input and output arguments:

y = myfunction (x)
methods

The method to use to compute the simplex gradient (optional).

Two methods are available:

  • The "forward" method used the current simplex to compute the simplex gradient.

  • The "centered" method creates an intermediate reflected simplex and computes the average.

If not provided, the default method is "forward".

data

User-defined data passed to the function (optional).

If data is provided, it is passed to the callback function both as an input and output argument. In that case, the function must have the following header :

[y, data] = myfunction (x, data)

The data input parameter may be used if the function uses some additional parameters. It is returned as an output parameter because the function may modify the data while computing the function value. This feature may be used, for example, to count the number of times that the function has been called.

g

A column vector of doubles.

Description

The optimsimplex_gradientfv function returns the simplex gradient of the function.

Example

s1 = optimsimplex_new ();
simplex = [
3.  0.  0.
4.  1.  0.
5.  0.  2.
];
s1 = optimsimplex_setall ( s1 , simplex );
g = optimsimplex_gradientfv ( s1 );
disp(g)

s1 = optimsimplex_destroy(s1);

See also

Report an issue
<< optimsimplex_getx Simplex optimsimplex_new >>

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Last updated:
Mon May 22 12:41:13 CEST 2023