Gradient method: Difference between revisions

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In [[optimization (mathematics)|optimization]], a '''gradient method''' is an [[algorithm]] to solve problems of the form
 
:<math>\min_{x\in\mathbb R^n}\; f(x)</math>
 
with the search directions defined by the [[gradient]] of the function at the current point. Examples of gradient methodmethods are the [[gradient descent]] and the [[conjugate gradient]].
 
==See also==
{{div col-begin|colwidth=22em}}
* [[Gradient descent]]
{{col-break}}
* [[Stochastic gradient descent]]
 
* [[GradientCoordinate descent method]]
* [[Frank–Wolfe algorithm]]
* [[Landweber iteration]]
* [[Random coordinate descent]]
* [[Conjugate gradient method]]
* [[Derivation of the conjugate gradient method]]
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* [[Biconjugate gradient method]]
* [[Biconjugate gradient stabilized method]]
{{div col-break end}}
 
==References==
* {{cite book | year=1997 | title=Optimization : Algorithms and Consistent Approximations
| publisher=Springer-Verlag | isbn=0-387-94971-2 |author=Elijah Polak}}
 
{{Optimization algorithms}}
 
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[[Category:Gradient methods| ]]
 
{{linear-algebra-stub}}
[[fr:Algorithme du gradient]]
[[ja:勾配法]]