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 eta and 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)[5],
                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 hidden.

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 hidden.

hyper_params <- list(
    input_dropout_ratio = c(0, 0.15, 0.3),
    hidden_dropout_ratios = c(0.3,0.3),
    hidden = c(32,32))
up vote 5 down vote accepted

You have to fix the number of hidden layers in a grid, if experimenting with hidden_dropout_ratios. At first I messed around with combining multiple grids; then, when researching for my H2O book, I saw someone mention, in passing, how grids get combined automatically if you give them the same name.

So, you still need to call h2o.grid() for each number of hidden layers, but they can all be in the same grid at the end. Here is your example modified for that:

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_params1 <- list(
    input_dropout_ratio = c(0, 0.15, 0.3),
    hidden_dropout_ratios = list(0, 0.15, 0.3),
    hidden = list(64)
    )

hyper_params2 <- list(
    input_dropout_ratio = c(0, 0.15, 0.3),
    hidden_dropout_ratios = list(c(0,0), c(0.15,0.15),c(0.3,0.3)),
    hidden = list(c(32,32))
    )

grid = h2o.grid("deeplearning", x=colnames(iris)[1:4], y=colnames(iris)[5],
    grid_id = "stackoverflow",
    training_frame = irisTrain, validation_frame = irisValid,
    hyper_params = hyper_params1, adaptive_rate = TRUE,
    variable_importances = TRUE, epochs = 50, stopping_rounds=5,
    stopping_tolerance=0.01, activation=c("RectifierWithDropout"),
    seed=1, reproducible=TRUE)

grid = h2o.grid("deeplearning", x=colnames(iris)[1:4], y=colnames(iris)[5],
    grid_id = "stackoverflow",
    training_frame = irisTrain, validation_frame = irisValid,
    hyper_params = hyper_params2, adaptive_rate = TRUE,
    variable_importances = TRUE, epochs = 50, stopping_rounds=5,
    stopping_tolerance=0.01, activation=c("RectifierWithDropout"),
    seed=1, reproducible=TRUE)

When I went to print the grid, I was reminded there is a bug with grid output when using list hyper-parameters, such as hidden or hidden_dropout_ratios. Your code is a nice self-contained example, so I'll report that now. In the meantime, here is a one-liner to show the values of the hyper-parameter corresponding to each:

sapply(models, function(m) c(
  paste(m@parameters$hidden, collapse = ","),
  paste(m@parameters$hidden_dropout_ratios, collapse=",")
  ))

Which gives:

     [,1]    [,2] [,3]        [,4]   [,5]      [,6] 
[1,] "32,32" "64" "32,32"     "64"   "32,32"   "64" 
[2,] "0,0"   "0"  "0.15,0.15" "0.15" "0.3,0.3" "0.3"

I.e. no hidden dropout is better than a little, which is better than a lot. And two hidden layers is better than one.

By the way,

  • input_dropout_ratio: controls dropout between input layer and the first hidden layer. Can be used independently of the activation function.
  • hidden_dropout_ratios: controls dropout between each hidden layer and the next layer (which is either the next hidden layer, or the output layer). If specified, you must specify one of the "WithDropout" activation functions.
  • It seems I'd already reported the grid output bug a month ago: 0xdata.atlassian.net/browse/PUBDEV-3153 – Darren Cook Aug 29 '16 at 19:20
  • Why do you think that my intention was to set input_dropout_ratio to zero? My intention was to learn both the input and hidden dropout ratio and including the zero in the lists in order to consider not using dropout as well. Do you spot a fallacy in my intention? – Elrond Aug 30 '16 at 0:25
  • @abvaekvnl Sorry, bad assumption by me. I'll edit my answer to put it back in! – Darren Cook Aug 30 '16 at 7:28

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