netopt.m

来自「高斯过程在空间统计学中的研究已有很长时间」· M 代码 · 共 53 行

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function [net, options, varargout] = netopt(net, options, x, t, alg);%NETOPT	Optimize the weights in a network model. %%	Description%%	NETOPT is a helper function which facilitates the training of%	networks using the general purpose optimizers as well as sampling%	from the posterior distribution of parameters using general purpose%	Markov chain Monte Carlo sampling algorithms. It can be used with any%	function that searches in parameter space using error and gradient%	functions.%%	[NET, OPTIONS] = NETOPT(NET, OPTIONS, X, T, ALG) takes a network%	data structure NET, together with a vector OPTIONS of parameters%	governing the behaviour of the optimization algorithm, a matrix X of%	input vectors and a matrix T of target vectors, and returns the%	trained network as well as an updated OPTIONS vector. The string ALG%	determines which optimization algorithm (CONJGRAD, QUASINEW, SCG,%	etc.) or Monte Carlo algorithm (such as HMC) will be used.%%	[NET, OPTIONS, VARARGOUT] = NETOPT(NET, OPTIONS, X, T, ALG) also%	returns any additional return values from the optimisation algorithm.%%	See also%	NETGRAD, BFGS, CONJGRAD, GRADDESC, HMC, SCG%%	Copyright (c) Ian T Nabney (1996-2001)optstring = [alg, '(''neterr'', w, options, ''netgrad'', net, x, t)'];% Extract weights from network as single vectorw = netpak(net);% Carry out optimisation[s{1:nargout}] = eval(optstring);w = s{1};if nargout > 1  options = s{2};  % If there are additional arguments, extract them  nextra = nargout - 2;  if nextra > 0    for i = 1:nextra      varargout{i} = s{i+2};    end  endend% Pack the weights back into the networknet = netunpak(net, w);

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