Many models in Machine Learning include hyper parameters. What is the best practice to find those hyper parameters using hold out data? Or what is your way to do that?
Grid search and manual search are the most widely use techniques for optimizing hyper-parameters of machine learning algorithms. However, a recent paper published by James Bergstra and Yoshua Bengio argued that random search is better than grid and manual search for hyper-parameter optimization. For more information about random ( grid and manual ) search please look at their paper:
Recently, I submitted ( and accepted ) a paper for the Pattern Recognition Letters Journal. For that paper I used the random search technique.