代码搜索:gradient

找到约 2,951 项符合「gradient」的源代码

代码结果 2,951
www.eeworm.com/read/212217/4938403

cpp gradientdoc.cpp

// gradientDoc.cpp : CgradientDoc 类的实现 // #include "stdafx.h" #include "gradient.h" #include "gradientDoc.h" #ifdef _DEBUG #define new DEBUG_NEW #endif // CgradientDoc IMPLEMENT_
www.eeworm.com/read/212217/4938405

cpp gradientview.cpp

// gradientView.cpp : CgradientView 类的实现 // #include "stdafx.h" #include "gradient.h" #include "gradientDoc.h" #include "gradientView.h" #include ".\gradientview.h" #ifdef _DEBUG #define
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cpp gradientdoc.cpp

// gradientDoc.cpp : CgradientDoc 类的实现 // #include "stdafx.h" #include "gradient.h" #include "gradientDoc.h" #ifdef _DEBUG #define new DEBUG_NEW #endif // CgradientDoc IMPLEMENT_
www.eeworm.com/read/344585/3207706

m mlpbkp.m

function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % togeth
www.eeworm.com/read/344585/3207810

m mlpgrad.m

function [g, gdata, gprior] = mlpgrad(net, x, t) %MLPGRAD Evaluate gradient of error function for 2-layer network. % % Description % G = MLPGRAD(NET, X, T) takes a network data structure NET together
www.eeworm.com/read/325480/3483481

m optimize.m

function [co, p, fret, its]=optimize(co, p, param) % [co, p, fret, iter]=cg_optimizable.optimize(co, p) % % The Fletcher-Reeves-Polak-Ribiere-Conjugate Gradient Algorithm % (from Numerical Recipe
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m optimize.m

function [co, p, fret, its]=optimize(co, p, param) % [co, p, fret, iter]=cg_optimizable.optimize(co, p) % % The Fletcher-Reeves-Polak-Ribiere-Conjugate Gradient Algorithm % (from Numerical Recipe
www.eeworm.com/read/396844/2406637

m mlpbkp.m

function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % togeth
www.eeworm.com/read/396844/2406742

m mlpgrad.m

function [g, gdata, gprior] = mlpgrad(net, x, t) %MLPGRAD Evaluate gradient of error function for 2-layer network. % % Description % G = MLPGRAD(NET, X, T) takes a network data structure NET together
www.eeworm.com/read/359369/2978436

m mlpbkp.m

function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % t