ft_robust_scaler
Feature Transformation – RobustScaler (Estimator)
Description
RobustScaler removes the median and scales the data according to the quantile range. The quantile range is by default IQR (Interquartile Range, quantile range between the 1st quartile = 25th quantile and the 3rd quartile = 75th quantile) but can be configured. Centering and scaling happen independently on each feature by computing the relevant statistics on the samples in the training set. Median and quantile range are then stored to be used on later data using the transform method. Note that missing values are ignored in the computation of medians and ranges.
Usage
ft_robust_scaler(
x,
input_col = NULL,
output_col = NULL,
lower = 0.25,
upper = 0.75,
with_centering = TRUE,
with_scaling = TRUE,
relative_error = 0.001,
uid = random_string("ft_robust_scaler_"),
...
)
Arguments
Argument | Description |
---|---|
x | A spark_connection , ml_pipeline , or a tbl_spark . |
input_col | The name of the input column. |
output_col | The name of the output column. |
lower | Lower quantile to calculate quantile range. |
upper | Upper quantile to calculate quantile range. |
with_centering | Whether to center data with median. |
with_scaling | Whether to scale the data to quantile range. |
relative_error | The target relative error for quantile computation. |
uid | A character string used to uniquely identify the feature transformer. |
… | Optional arguments; currently unused. |
Details
In the case where x
is a tbl_spark
, the estimator fits against x
to obtain a transformer, which is then immediately used to transform x
, returning a tbl_spark
.
Value
The object returned depends on the class of x
.
spark_connection
: Whenx
is aspark_connection
, the function returns aml_transformer
, aml_estimator
, or one of their subclasses. The object contains a pointer to a SparkTransformer
orEstimator
object and can be used to composePipeline
objects.ml_pipeline
: Whenx
is aml_pipeline
, the function returns aml_pipeline
with the transformer or estimator appended to the pipeline.tbl_spark
: Whenx
is atbl_spark
, a transformer is constructed then immediately applied to the inputtbl_spark
, returning atbl_spark
See Also
See https://spark.apache.org/docs/latest/ml-features.html for more information on the set of transformations available for DataFrame columns in Spark.
Other feature transformers: ft_binarizer()
, ft_bucketizer()
, ft_chisq_selector()
, ft_count_vectorizer()
, ft_dct()
, ft_elementwise_product()
, ft_feature_hasher()
, ft_hashing_tf()
, ft_idf()
, ft_imputer()
, ft_index_to_string()
, ft_interaction()
, ft_lsh
, ft_max_abs_scaler()
, ft_min_max_scaler()
, ft_ngram()
, ft_normalizer()
, ft_one_hot_encoder_estimator()
, ft_one_hot_encoder()
, ft_pca()
, ft_polynomial_expansion()
, ft_quantile_discretizer()
, ft_r_formula()
, ft_regex_tokenizer()
, ft_sql_transformer()
, ft_standard_scaler()
, ft_stop_words_remover()
, ft_string_indexer()
, ft_tokenizer()
, ft_vector_assembler()
, ft_vector_indexer()
, ft_vector_slicer()
, ft_word2vec()