sparklyr (version 0.3.7)

ml_als_factorization: Spark ML -- Alternating Least Squares (ALS) matrix factorization.

Description

Perform alternating least squares matrix factorization on a Spark DataFrame.

Usage

ml_als_factorization(x, rating.column = "rating", user.column = "user", item.column = "item", rank = 10L, regularization.parameter = 0.1, iter.max = 10L, ml.options = ml_options(), ...)

Arguments

x
An object coercable to a Spark DataFrame (typically, a tbl_spark).
rating.column
The name of the column containing ratings.
user.column
The name of the column containing user IDs.
item.column
The name of the column containing item IDs.
rank
Rank of the factorization.
regularization.parameter
The regularization parameter.
iter.max
The maximum number of iterations to use.
ml.options
Optional arguments, used to affect the model generated. See ml_options for more details.
...
Optional arguments; currently unused.

See Also

Other Spark ML routines: ml_decision_tree, ml_generalized_linear_regression, ml_gradient_boosted_trees, ml_kmeans, ml_lda, ml_linear_regression, ml_logistic_regression, ml_multilayer_perceptron, ml_naive_bayes, ml_one_vs_rest, ml_pca, ml_random_forest, ml_survival_regression