I want to tune a neural network with dropout using h2o in R. Here I provide a reproducible example for the iris dataset. I'm avoiding to tune
epsiplon (i.e. ADADELTA hyper-parameters) with the only purpose of making computations faster.
require(h2o) h2o.init() data(iris) iris = iris[sample(1:nrow(iris)), ] irisTrain = as.h2o(iris[1:90, ]) irisValid = as.h2o(iris[91:120, ]) irisTest = as.h2o(iris[121:150, ]) hyper_params <- list( input_dropout_ratio = list(0, 0.15, 0.3), hidden_dropout_ratios = list(0, 0.15, 0.3, c(0,0), c(0.15,0.15),c(0.3,0.3)), hidden = list(64, c(32,32))) grid = h2o.grid("deeplearning", x=colnames(iris)[1:4], y=colnames(iris), training_frame = irisTrain, validation_frame = irisValid, hyper_params = hyper_params, adaptive_rate = TRUE, variable_importances = TRUE, epochs = 50, stopping_rounds=5, stopping_tolerance=0.01, activation=c("RectifierWithDropout"), seed=1, reproducible=TRUE)
The output is:
Details: ERRR on field: _hidden_dropout_ratios: Must have 1 hidden layer dropout ratios.
The problem is in
hidden_dropout_ratios. Note that I'm including 0 for input_dropout_ratio and hidden_dropout_ratios since I also want to test the activation function without dropout. I'm aware that I could use
activation="Rectifier but I think that my configuration should lead to the same result. How do I tune
hidden_dropout_ratios when tuning architectures with different numbers of layers?
Attempt 1: Unsuccessful and I'm not tuning
hyper_params <- list( input_dropout_ratio = c(0, 0.15, 0.3), hidden_dropout_ratios = list(c(0.3,0.3), c(0.5,0.5)), hidden = c(32,32)) ERRR on field: _hidden_dropout_ratios: Must have 1 hidden layer dropout ratios.
Attempt 2: Successful but I'm not tuning
hyper_params <- list( input_dropout_ratio = c(0, 0.15, 0.3), hidden_dropout_ratios = c(0.3,0.3), hidden = c(32,32))