I'm working on a regression problem and I tried it via tensorflow and keras with various Neural Network optimizers such as SGD, Adam and Adadelta and also matlab nntool with its default parameters tainlm " Levenberg-Marquardt optimization " and adaptation learning function "learngdm" gradient descent with momentum. Matlab outperforms tensorflow by large distance, such that matlab performance reach less than 1 mse while tensorflow stuck at 3815 mse. Is that logic or I'm doing something wrong ? Is there is certain parameters should I tune to duplicate the matlab performance via tensorflow ?

  • You get what you pay for, I guess... – Cris Luengo Dec 6 '18 at 17:29
  • But how come, there is numerous research paper have been recently published on these optimizers how Levenberg-Marquardt "Old" still outperform them ?! – Ramy Maher Dec 7 '18 at 6:31

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