libsvm package implements Spark SQL data source API for loading LIBSVM data as DataFrame.
The loaded DataFrame has two columns: label containing labels stored as doubles and
features containing feature vectors stored as Vectors.
To use LIBSVM data source, you need to set "libsvm" as the format in DataFrameReader and
optionally specify options, for example:
LIBSVM data source supports the following options:
"numFeatures": number of features.
If unspecified or nonpositive, the number of features will be determined automatically at the
cost of one additional pass.
This is also useful when the dataset is already split into multiple files and you want to load
them separately, because some features may not present in certain files, which leads to
inconsistent feature dimensions.
"vectorType": feature vector type, "sparse" (default) or "dense".
Note that this class is public for documentation purpose. Please don't use this class directly.
Rather, use the data source API as illustrated above.
libsvm
package implements Spark SQL data source API for loading LIBSVM data as DataFrame. The loaded DataFrame has two columns:label
containing labels stored as doubles andfeatures
containing feature vectors stored as Vectors.To use LIBSVM data source, you need to set "libsvm" as the format in DataFrameReader and optionally specify options, for example:
LIBSVM data source supports the following options:
Note that this class is public for documentation purpose. Please don't use this class directly. Rather, use the data source API as illustrated above.
LIBSVM datasets