How to avoid declaration of neural network in an m file again and again?

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I am using a feed forward neural network with keyword feedforwardnet in an m file.Whenever I run my m file neural network gives different results may be because of new weights and biases for each new declaration of neural network.I am not using init() function which initializes weights and biases each time; even then it is happening.It seems to happen because of new declaration of network each time m file is run.Please help me to avoid this so that I can obtain consistent results from neural network.

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Greg Heath
Greg Heath el 1 de Jun. de 2013
rng(0)
% help rng %doc rng
Thank you for formally acceptingmy answer
Greg
  1 comentario
mittal54
mittal54 el 15 de Mayo de 2015
Thanks @greg I was wondering why rng(0) is used in most of the examples. Now I got it

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