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Optimizing Deep Network for Image Classification with Hyper Parameter Tuning
2019
International Journal of Engineering and Advanced Technology
The deep network model comprises of several processing layers and deep learning techniques help us in representing data with diverse levels of abstraction. Based on the practical importance and the efficiency of machine learning, optimization of deep models are carried out relating to the objective functions and its parameters for a particular problem. The present work focuses on an empirical analysis of the performance of stochastic optimization methods with regard to hyperparameters for the
doi:10.35940/ijeat.b3515.129219
fatcat:3qdxulcd5jduvinhsnlziq4kry