Optimal Hyperparameters for Deep LSTM-Networks for Sequence Labeling Tasks

21 Jul 2017Nils ReimersIryna Gurevych

Selecting optimal parameters for a neural network architecture can often make the difference between mediocre and state-of-the-art performance. However, little is published which parameters and design choices should be evaluated or selected making the correct hyperparameter optimization often a "black art that requires expert experiences" (Snoek et al., 2012)... (read more)

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