nnlmarq.m

来自「神经网络设计书籍配套源码(matlab平台)」· M 代码 · 共 22 行

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function jac = nnlmarq(p,d)
%NNLMARQ  Marquardt Backpropagation Learning Rule
%           
%         (See PURELIN, LOGSIG, TANSIG)
%
%         jac = NNLMARQ(P,D)
%           P  - RxQ matrix of input vectors.
%           D  - SxQ matrix of sensitivity vectors.
%         Returns:
%           jac - a partial jacobian matrix.


if nargin ~= 2
  error('Wrong number of arguments.');
end

[s,q]=size(d);
[r,q]=size(p);

jac=kron(p',ones(1,s)).*kron(ones(1,r),d');

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