Builds a deep neural network on an H2OFrame containing various data sources.

h2o.deepwater(x, y, training_frame, model_id = NULL, checkpoint = NULL,
  autoencoder = FALSE, validation_frame = NULL, nfolds = 0,
  balance_classes = FALSE, max_after_balance_size = 5,
  class_sampling_factors = NULL, keep_cross_validation_models = TRUE,
  keep_cross_validation_predictions = FALSE,
  keep_cross_validation_fold_assignment = FALSE,
  fold_assignment = c("AUTO", "Random", "Modulo", "Stratified"),
  fold_column = NULL, offset_column = NULL, weights_column = NULL,
  score_each_iteration = FALSE, categorical_encoding = c("AUTO",
  "Enum", "OneHotInternal", "OneHotExplicit", "Binary", "Eigen",
  "LabelEncoder", "SortByResponse", "EnumLimited"),
  overwrite_with_best_model = TRUE, epochs = 10,
  train_samples_per_iteration = -2, target_ratio_comm_to_comp = 0.05,
  seed = -1, standardize = TRUE, learning_rate = 0.001,
  learning_rate_annealing = 1e-06, momentum_start = 0.9,
  momentum_ramp = 10000, momentum_stable = 0.9,
  distribution = c("AUTO", "bernoulli", "multinomial", "gaussian",
  "poisson", "gamma", "tweedie", "laplace", "quantile", "huber"),
  score_interval = 5, score_training_samples = 10000,
  score_validation_samples = 0, score_duty_cycle = 0.1,
  classification_stop = 0, regression_stop = 0, stopping_rounds = 5,
  stopping_metric = c("AUTO", "deviance", "logloss", "MSE", "RMSE",
  "MAE", "RMSLE", "AUC", "lift_top_group", "misclassification",
  "mean_per_class_error", "custom", "custom_increasing"),
  stopping_tolerance = 0, max_runtime_secs = 0,
  ignore_const_cols = TRUE, shuffle_training_data = TRUE,
  mini_batch_size = 32, clip_gradient = 10, network = c("auto",
  "user", "lenet", "alexnet", "vgg", "googlenet", "inception_bn",
  "resnet"), backend = c("mxnet", "caffe", "tensorflow"),
  image_shape = c(0, 0), channels = 3, sparse = FALSE, gpu = TRUE,
  device_id = c(0), cache_data = TRUE,
  network_definition_file = NULL, network_parameters_file = NULL,
  mean_image_file = NULL, export_native_parameters_prefix = NULL,
  activation = c("Rectifier", "Tanh"), hidden = NULL,
  input_dropout_ratio = 0, hidden_dropout_ratios = NULL,
  problem_type = c("auto", "image", "dataset"),
  export_checkpoints_dir = NULL)

Arguments

x

(Optional) A vector containing the names or indices of the predictor variables to use in building the model. If x is missing, then all columns except y are used.

y

The name or column index of the response variable in the data. The response must be either a numeric or a categorical/factor variable. If the response is numeric, then a regression model will be trained, otherwise it will train a classification model.

training_frame

Id of the training data frame.

model_id

Destination id for this model; auto-generated if not specified.

checkpoint

Model checkpoint to resume training with.

autoencoder

Logical. Auto-Encoder. Defaults to FALSE.

validation_frame

Id of the validation data frame.

nfolds

Number of folds for K-fold cross-validation (0 to disable or >= 2). Defaults to 0.

balance_classes

Logical. Balance training data class counts via over/under-sampling (for imbalanced data). Defaults to FALSE.

max_after_balance_size

Maximum relative size of the training data after balancing class counts (can be less than 1.0). Requires balance_classes. Defaults to 5.0.

class_sampling_factors

Desired over/under-sampling ratios per class (in lexicographic order). If not specified, sampling factors will be automatically computed to obtain class balance during training. Requires balance_classes.

keep_cross_validation_models

Logical. Whether to keep the cross-validation models. Defaults to TRUE.

keep_cross_validation_predictions

Logical. Whether to keep the predictions of the cross-validation models. Defaults to FALSE.

keep_cross_validation_fold_assignment

Logical. Whether to keep the cross-validation fold assignment. Defaults to FALSE.

fold_assignment

Cross-validation fold assignment scheme, if fold_column is not specified. The 'Stratified' option will stratify the folds based on the response variable, for classification problems. Must be one of: "AUTO", "Random", "Modulo", "Stratified". Defaults to AUTO.

fold_column

Column with cross-validation fold index assignment per observation.

offset_column

Offset column. This will be added to the combination of columns before applying the link function.

weights_column

Column with observation weights. Giving some observation a weight of zero is equivalent to excluding it from the dataset; giving an observation a relative weight of 2 is equivalent to repeating that row twice. Negative weights are not allowed. Note: Weights are per-row observation weights and do not increase the size of the data frame. This is typically the number of times a row is repeated, but non-integer values are supported as well. During training, rows with higher weights matter more, due to the larger loss function pre-factor.

score_each_iteration

Logical. Whether to score during each iteration of model training. Defaults to FALSE.

categorical_encoding

Encoding scheme for categorical features Must be one of: "AUTO", "Enum", "OneHotInternal", "OneHotExplicit", "Binary", "Eigen", "LabelEncoder", "SortByResponse", "EnumLimited". Defaults to AUTO.

overwrite_with_best_model

Logical. If enabled, override the final model with the best model found during training. Defaults to TRUE.

epochs

How many times the dataset should be iterated (streamed), can be fractional. Defaults to 10.

train_samples_per_iteration

Number of training samples (globally) per MapReduce iteration. Special values are 0: one epoch, -1: all available data (e.g., replicated training data), -2: automatic. Defaults to -2.

target_ratio_comm_to_comp

Target ratio of communication overhead to computation. Only for multi-node operation and train_samples_per_iteration = -2 (auto-tuning). Defaults to 0.05.

seed

Seed for random numbers (affects certain parts of the algo that are stochastic and those might or might not be enabled by default) Note: only reproducible when running single threaded. Defaults to -1 (time-based random number).

standardize

Logical. If enabled, automatically standardize the data. If disabled, the user must provide properly scaled input data. Defaults to TRUE.

learning_rate

Learning rate (higher => less stable, lower => slower convergence). Defaults to 0.001.

learning_rate_annealing

Learning rate annealing: rate / (1 + rate_annealing * samples). Defaults to 1e-06.

momentum_start

Initial momentum at the beginning of training (try 0.5). Defaults to 0.9.

momentum_ramp

Number of training samples for which momentum increases. Defaults to 10000.

momentum_stable

Final momentum after the ramp is over (try 0.99). Defaults to 0.9.

distribution

Distribution function Must be one of: "AUTO", "bernoulli", "multinomial", "gaussian", "poisson", "gamma", "tweedie", "laplace", "quantile", "huber". Defaults to AUTO.

score_interval

Shortest time interval (in seconds) between model scoring. Defaults to 5.

score_training_samples

Number of training set samples for scoring (0 for all). Defaults to 10000.

score_validation_samples

Number of validation set samples for scoring (0 for all). Defaults to 0.

score_duty_cycle

Maximum duty cycle fraction for scoring (lower: more training, higher: more scoring). Defaults to 0.1.

classification_stop

Stopping criterion for classification error fraction on training data (-1 to disable). Defaults to 0.

regression_stop

Stopping criterion for regression error (MSE) on training data (-1 to disable). Defaults to 0.

stopping_rounds

Early stopping based on convergence of stopping_metric. Stop if simple moving average of length k of the stopping_metric does not improve for k:=stopping_rounds scoring events (0 to disable) Defaults to 5.

stopping_metric

Metric to use for early stopping (AUTO: logloss for classification, deviance for regression). Note that custom and custom_increasing can only be used in GBM and DRF with the Python client. Must be one of: "AUTO", "deviance", "logloss", "MSE", "RMSE", "MAE", "RMSLE", "AUC", "lift_top_group", "misclassification", "mean_per_class_error", "custom", "custom_increasing". Defaults to AUTO.

stopping_tolerance

Relative tolerance for metric-based stopping criterion (stop if relative improvement is not at least this much) Defaults to 0.

max_runtime_secs

Maximum allowed runtime in seconds for model training. Use 0 to disable. Defaults to 0.

ignore_const_cols

Logical. Ignore constant columns. Defaults to TRUE.

shuffle_training_data

Logical. Enable global shuffling of training data. Defaults to TRUE.

mini_batch_size

Mini-batch size (smaller leads to better fit, larger can speed up and generalize better). Defaults to 32.

clip_gradient

Clip gradients once their absolute value is larger than this value. Defaults to 10.

network

Network architecture. Must be one of: "auto", "user", "lenet", "alexnet", "vgg", "googlenet", "inception_bn", "resnet". Defaults to auto.

backend

Deep Learning Backend. Must be one of: "mxnet", "caffe", "tensorflow". Defaults to mxnet.

image_shape

Width and height of image. Defaults to [0, 0].

channels

Number of (color) channels. Defaults to 3.

sparse

Logical. Sparse data handling (more efficient for data with lots of 0 values). Defaults to FALSE.

gpu

Logical. Whether to use a GPU (if available). Defaults to TRUE.

device_id

Device IDs (which GPUs to use). Defaults to [0].

cache_data

Logical. Whether to cache the data in memory (automatically disabled if data size is too large). Defaults to TRUE.

network_definition_file

Path of file containing network definition (graph, architecture).

network_parameters_file

Path of file containing network (initial) parameters (weights, biases).

mean_image_file

Path of file containing the mean image data for data normalization.

export_native_parameters_prefix

Path (prefix) where to export the native model parameters after every iteration.

activation

Activation function. Only used if no user-defined network architecture file is provided, and only for problem_type=dataset. Must be one of: "Rectifier", "Tanh".

hidden

Hidden layer sizes (e.g. [200, 200]). Only used if no user-defined network architecture file is provided, and only for problem_type=dataset.

input_dropout_ratio

Input layer dropout ratio (can improve generalization, try 0.1 or 0.2). Defaults to 0.

hidden_dropout_ratios

Hidden layer dropout ratios (can improve generalization), specify one value per hidden layer, defaults to 0.5.

problem_type

Problem type, auto-detected by default. If set to image, the H2OFrame must contain a string column containing the path (URI or URL) to the images in the first column. If set to text, the H2OFrame must contain a string column containing the text in the first column. If set to dataset, Deep Water behaves just like any other H2O Model and builds a model on the provided H2OFrame (non-String columns). Must be one of: "auto", "image", "dataset". Defaults to auto.

export_checkpoints_dir

Automatically export generated models to this directory.