Parameters of H2OGLM¶
Affected Classes¶
- ai.h2o.sparkling.ml.algos.H2OGLM
- ai.h2o.sparkling.ml.algos.classification.H2OGLMClassifier
- ai.h2o.sparkling.ml.algos.regression.H2OGLMRegressor
Parameters¶
- Each parameter has also a corresponding getter and setter method. (E.g.: - label->- getLabel(),- setLabel(...))
- HGLM
- If set to true, will return HGLM model. Otherwise, normal GLM model will be returned. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- betaConstraints
- Data frame of beta constraints enabling to set special conditions over the model coefficients. - Scala default value: - null; Python default value:- None
- ignoredCols
- Names of columns to ignore for training. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- interactionPairs
- A list of pairwise (first order) column interactions. - Scala default value: - null; Python default value:- None
- plugValues
- A map containing values that will be used to impute missing values of the training/validation frame, use with conjunction missingValuesHandling = “PlugValues”) - Scala default value: - null; Python default value:- None
- randomCols
- Names of random columns for HGLM. - Scala default value: - null; Python default value:- None
- alphaValue
- Distribution of regularization between the L1 (Lasso) and L2 (Ridge) penalties. A value of 1 for alpha represents Lasso regression, a value of 0 produces Ridge regression, and anything in between specifies the amount of mixing between the two. Default value of alpha is 0 when SOLVER = ‘L-BFGS’; 0.5 otherwise. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- aucType
- Set default multinomial AUC type. Possible values are - "AUTO",- "NONE",- "MACRO_OVR",- "WEIGHTED_OVR",- "MACRO_OVO",- "WEIGHTED_OVO".- Default value: - "AUTO"- Also available on the trained model. 
- balanceClasses
- Balance training data class counts via over/under-sampling (for imbalanced data). - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- betaEpsilon
- Converge if beta changes less (using L-infinity norm) than beta esilon, ONLY applies to IRLSM solver . - Scala default value: - 1.0e-4; Python default value:- 1.0E-4- Also available on the trained model. 
- calcLike
- if true, will return likelihood function value for HGLM. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- checkpoint
- Model checkpoint to resume training with. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- classSamplingFactors
- 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. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- coldStart
- Only applicable to multiple alpha/lambda values. If false, build the next model for next set of alpha/lambda values starting from the values provided by current model. If true will start GLM model from scratch. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- columnsToCategorical
- List of columns to convert to categorical before modelling - Scala default value: - Array(); Python default value:- []
- computePValues
- Request p-values computation, p-values work only with IRLSM solver and no regularization. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- convertInvalidNumbersToNa
- If set to ‘true’, the model converts invalid numbers to NA during making predictions. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- convertUnknownCategoricalLevelsToNa
- If set to ‘true’, the model converts unknown categorical levels to NA during making predictions. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- customMetricFunc
- Reference to custom evaluation function, format: language:keyName=funcName. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- detailedPredictionCol
- Column containing additional prediction details, its content depends on the model type. - Default value: - "detailed_prediction"- Also available on the trained model. 
- earlyStopping
- Stop early when there is no more relative improvement on train or validation (if provided). - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- exportCheckpointsDir
- Automatically export generated models to this directory. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- family
- Family. Use binomial for classification with logistic regression, others are for regression problems. Possible values are - "AUTO",- "gaussian",- "binomial",- "fractionalbinomial",- "quasibinomial",- "poisson",- "gamma",- "multinomial",- "tweedie",- "ordinal",- "negativebinomial".- Default value: - "AUTO"- Also available on the trained model. 
- featuresCols
- Name of feature columns - Scala default value: - Array(); Python default value:- []- Also available on the trained model. 
- foldAssignment
- 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. Possible values are - "AUTO",- "Random",- "Modulo",- "Stratified".- Default value: - "AUTO"- Also available on the trained model. 
- foldCol
- Column with cross-validation fold index assignment per observation. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- gradientEpsilon
- Converge if objective changes less (using L-infinity norm) than this, ONLY applies to L-BFGS solver. Default indicates: If lambda_search is set to False and lambda is equal to zero, the default value of gradient_epsilon is equal to .000001, otherwise the default value is .0001. If lambda_search is set to True, the conditional values above are 1E-8 and 1E-6 respectively. - Default value: - -1.0- Also available on the trained model. 
- ignoreConstCols
- Ignore constant columns. - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- interactions
- A list of predictor column indices to interact. All pairwise combinations will be computed for the list. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- intercept
- Include constant term in the model. - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- keepCrossValidationFoldAssignment
- Whether to keep the cross-validation fold assignment. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- keepCrossValidationModels
- Whether to keep the cross-validation models. - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- keepCrossValidationPredictions
- Whether to keep the predictions of the cross-validation models. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- labelCol
- Response variable column. - Default value: - "label"- Also available on the trained model. 
- lambdaMinRatio
- Minimum lambda used in lambda search, specified as a ratio of lambda_max (the smallest lambda that drives all coefficients to zero). Default indicates: if the number of observations is greater than the number of variables, then lambda_min_ratio is set to 0.0001; if the number of observations is less than the number of variables, then lambda_min_ratio is set to 0.01. - Default value: - -1.0- Also available on the trained model. 
- lambdaSearch
- Use lambda search starting at lambda max, given lambda is then interpreted as lambda min. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- lambdaValue
- Regularization strength. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- link
- Link function. Possible values are - "family_default",- "identity",- "logit",- "log",- "inverse",- "tweedie",- "multinomial",- "ologit",- "oprobit",- "ologlog".- Default value: - "family_default"- Also available on the trained model. 
- maxActivePredictors
- Maximum number of active predictors during computation. Use as a stopping criterion to prevent expensive model building with many predictors. Default indicates: If the IRLSM solver is used, the value of max_active_predictors is set to 5000 otherwise it is set to 100000000. - Default value: - -1- Also available on the trained model. 
- maxAfterBalanceSize
- Maximum relative size of the training data after balancing class counts (can be less than 1.0). Requires balance_classes. - Scala default value: - 5.0f; Python default value:- 5.0- Also available on the trained model. 
- maxConfusionMatrixSize
- [Deprecated] Maximum size (# classes) for confusion matrices to be printed in the Logs. - Default value: - 20- Also available on the trained model. 
- maxIterations
- Maximum number of iterations. - Default value: - -1- Also available on the trained model. 
- maxRuntimeSecs
- Maximum allowed runtime in seconds for model training. Use 0 to disable. - Default value: - 0.0- Also available on the trained model. 
- missingValuesHandling
- Handling of missing values. Either MeanImputation, Skip or PlugValues. Possible values are - "MeanImputation",- "PlugValues",- "Skip".- Default value: - "MeanImputation"- Also available on the trained model. 
- modelId
- Destination id for this model; auto-generated if not specified. - Scala default value: - null; Python default value:- None
- namedMojoOutputColumns
- Mojo Output is not stored in the array but in the properly named columns - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- nfolds
- Number of folds for K-fold cross-validation (0 to disable or >= 2). - Default value: - 0- Also available on the trained model. 
- nlambdas
- Number of lambdas to be used in a search. Default indicates: If alpha is zero, with lambda search set to True, the value of nlamdas is set to 30 (fewer lambdas are needed for ridge regression) otherwise it is set to 100. - Default value: - -1- Also available on the trained model. 
- nonNegative
- Restrict coefficients (not intercept) to be non-negative. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- objReg
- Likelihood divider in objective value computation, default is 1/nobs. - Default value: - -1.0- Also available on the trained model. 
- objectiveEpsilon
- Converge if objective value changes less than this. Default indicates: If lambda_search is set to True the value of objective_epsilon is set to .0001. If the lambda_search is set to False and lambda is equal to zero, the value of objective_epsilon is set to .000001, for any other value of lambda the default value of objective_epsilon is set to .0001. - Default value: - -1.0- Also available on the trained model. 
- offsetCol
- Offset column. This will be added to the combination of columns before applying the link function. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- predictionCol
- Prediction column name - Default value: - "prediction"- Also available on the trained model. 
- prior
- Prior probability for y==1. To be used only for logistic regression iff the data has been sampled and the mean of response does not reflect reality. - Default value: - -1.0- Also available on the trained model. 
- randomFamily
- Random Component Family array. One for each random component. Only support gaussian for now. Possible values are - "AUTO",- "gaussian",- "binomial",- "fractionalbinomial",- "quasibinomial",- "poisson",- "gamma",- "multinomial",- "tweedie",- "ordinal",- "negativebinomial".- Scala default value: - null; Python default value:- None- Also available on the trained model. 
- randomLink
- Link function array for random component in HGLM. Possible values are - "family_default",- "identity",- "logit",- "log",- "inverse",- "tweedie",- "multinomial",- "ologit",- "oprobit",- "ologlog".- Scala default value: - null; Python default value:- None- Also available on the trained model. 
- removeCollinearCols
- In case of linearly dependent columns, remove some of the dependent columns. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- scoreEachIteration
- Whether to score during each iteration of model training. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- scoreIterationInterval
- Perform scoring for every score_iteration_interval iterations. - Default value: - -1- Also available on the trained model. 
- seed
- Seed for pseudo random number generator (if applicable). - Scala default value: - -1L; Python default value:- -1- Also available on the trained model. 
- solver
- AUTO will set the solver based on given data and the other parameters. IRLSM is fast on on problems with small number of predictors and for lambda-search with L1 penalty, L_BFGS scales better for datasets with many columns. Possible values are - "AUTO",- "IRLSM",- "L_BFGS",- "COORDINATE_DESCENT_NAIVE",- "COORDINATE_DESCENT",- "GRADIENT_DESCENT_LH",- "GRADIENT_DESCENT_SQERR".- Default value: - "AUTO"- Also available on the trained model. 
- splitRatio
- Accepts values in range [0, 1.0] which determine how large part of dataset is used for training and for validation. For example, 0.8 -> 80% training 20% validation. This parameter is ignored when validationDataFrame is set. - Default value: - 1.0
- standardize
- Standardize numeric columns to have zero mean and unit variance. - Scala default value: - true; Python default value:- True- Also available on the trained model. 
- startval
- double array to initialize fixed and random coefficients for HGLM, coefficients for GLM. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- stoppingMetric
- Metric to use for early stopping (AUTO: logloss for classification, deviance for regression and anonomaly_score for Isolation Forest). Note that custom and custom_increasing can only be used in GBM and DRF with the Python client. Possible values are - "AUTO",- "deviance",- "logloss",- "MSE",- "RMSE",- "MAE",- "RMSLE",- "AUC",- "AUCPR",- "lift_top_group",- "misclassification",- "mean_per_class_error",- "anomaly_score",- "custom",- "custom_increasing".- Default value: - "AUTO"- Also available on the trained model. 
- stoppingRounds
- 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). - Default value: - 0- Also available on the trained model. 
- stoppingTolerance
- Relative tolerance for metric-based stopping criterion (stop if relative improvement is not at least this much). - Default value: - 0.001- Also available on the trained model. 
- theta
- Theta. - Scala default value: - 1.0e-10; Python default value:- 1.0E-10- Also available on the trained model. 
- tweedieLinkPower
- Tweedie link power. - Default value: - 1.0- Also available on the trained model. 
- tweedieVariancePower
- Tweedie variance power. - Default value: - 0.0- Also available on the trained model. 
- validationDataFrame
- A data frame dedicated for a validation of the trained model. If the parameters is not set,a validation frame created via the ‘splitRatio’ parameter. - Scala default value: - null; Python default value:- None
- weightCol
- 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. - Scala default value: - null; Python default value:- None- Also available on the trained model. 
- withContributions
- Enables or disables generating a sub-column of detailedPredictionCol containing Shapley values. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- withLeafNodeAssignments
- Enables or disables computation of leaf node assignments. - Scala default value: - false; Python default value:- False- Also available on the trained model. 
- withStageResults
- Enables or disables computation of stage results. - Scala default value: - false; Python default value:- False- Also available on the trained model.