For this engine, there is a single mode: regression
This model has 2 tuning parameters:
penalty
: Amount of Regularization (type: double, default: 0.0)
mixture
: Proportion of Lasso Penalty (type: double, default: 0.0)
For penalty
, the amount of regularization includes both the L1 penalty (i.e., lasso) and the L2 penalty (i.e., ridge or weight decay). As for mixture
:
mixture = 1
specifies a pure lasso model,mixture = 0
specifies a ridge regression model, and0 < mixture < 1
specifies an elastic net model, interpolating lasso and ridge.linear_reg(penalty = double(1), mixture = double(1)) %>%
set_engine("spark") %>%
translate()
## Linear Regression Model Specification (regression)
##
## Main Arguments:
## penalty = double(1)
## mixture = double(1)
##
## Computational engine: spark
##
## Model fit template:
## sparklyr::ml_linear_regression(x = missing_arg(), formula = missing_arg(),
## weights = missing_arg(), reg_param = double(1), elastic_net_param = double(1))
Factor/categorical predictors need to be converted to numeric values (e.g., dummy or indicator variables) for this engine. When using the formula method via \code{\link[=fit.model_spec]{fit()}}, parsnip will convert factor columns to indicators.
Predictors should have the same scale. One way to achieve this is to center and scale each so that each predictor has mean zero and a variance of one.
By default, ml_linear_regression()
uses the argument standardization = TRUE
to center and scale the data.
This model can utilize case weights during model fitting. To use them, see the documentation in [case_weights] and the examples on tidymodels.org
.
The fit()
and fit_xy()
arguments have arguments called case_weights
that expect vectors of case weights.
Note that, for spark engines, the case_weight
argument value should be a character string to specify the column with the numeric case weights.
For models created using the "spark"
engine, there are several things to consider.
fit()
is available; using fit_xy()
will generate an error. save()
), the model$fit
element of the parsnip object should be serialized via ml_save(object$fit)
and separately saved to disk. In a new session, the object can be reloaded and reattached to the parsnip object.Luraschi, J, K Kuo, and E Ruiz. 2019. Mastering Spark with R. O'Reilly Media
Hastie, T, R Tibshirani, and M Wainwright. 2015. Statistical Learning with Sparsity. CRC Press.
Kuhn, M, and K Johnson. 2013. Applied Predictive Modeling. Springer.
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