I have some difficulties with the grid (Hyperparameters) search.
I am currently working with
h2o (latest version) in R. My problem is when I specifiy a cartesian grid with 2 hyperparameters to test:
hyper_grid <- list(max_depth = c(1, 2), ntrees = c(600, 1000))
and I launch the search with the function
h2o.grid to get my grid, it is building me a grid which contains a 107 models. Furthermore, it doesn't take into account when i specify the
Finally, I can't understand why the grid shows me "the best model" with 100 trees while I asked to create models with 600 or 1000 trees, and a max depth of 3 while I asked that the max depth should be 1 or 2.
My code is:
hyper_grid <- list(max_depth = c(1, 2), ntrees = c(600, 1000)) # perform grid search grid <- h2o.grid( algorithm = "gbm", grid_id = "gbm_grid1", x = predicteurs, y = "strategie", distribution = "multinomial", auc_type = "WEIGHTED_OVO", training_frame = train_nav_80, # Containing 80% of all data validation_frame = valid_nav_80, # Containing 20% of all data hyper_params = hyper_grid, seed = 1 ) # collect the results and sort by our model performance metric of choice grid_perf <- h2o.getGrid( grid_id = "gbm_grid1", sort_by = "auc", decreasing = F ) grid_perf
My results are :
Grid ID: gbm_grid1 Used hyper parameters: - max_depth - ntrees Number of models: 107, Number of failed models: 0 Hyper-Parameter Search Summary: ordered by increasing auc H2OBinomialMetrics: gbm ** Reported on validation data. ** MSE: 0.2284556 RMSE: 0.4779703 LogLoss: 0.6495512 Mean Per-Class Error: 0.346857 AUC: 0.7472901 AUCPR: 0.7680425 Gini: 0.4945802 R^2: 0.082338 ### Best model : ### - Number of trees = 100, - number_of_internal_trees = 100 - max_depth = 3
Thank you in advance