Newton Raphson Optimization by Symbolic Math

Minimizes a target function. Derivatives are computed automatically by the software.
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Aggiornato 9 ott 2015

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For a quick start, copy the files and run 'Newton_Raphson_Symbolic_Math_Example.m'
The Newton-Raphson optimization method attempts to minimizes a target function by zeroing its gradient. This method is highly efficient, especially for convex or semi-convex functions, but requires explicit expressions of the gradient vector and Hessian matrix. Direct calculation of these derivatives may be tedious in many cases. This function simplifies the Newton Raphson algorithm by calculating these derivatives automatically using symbolic math.
To use the function, all one has to do is to create a symbolic function. The software will compute the derivatives automatically, and execute the Newton Raphson algorithm to find a minimum point.

Cita come

yoash levron (2024). Newton Raphson Optimization by Symbolic Math (https://www.mathworks.com/matlabcentral/fileexchange/53422-newton-raphson-optimization-by-symbolic-math), MATLAB Central File Exchange. Recuperato .

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Versione Pubblicato Note della release
1.0.0.0