--- layout: global title: Classification and Regression - RDD-based API displayTitle: Classification and Regression - RDD-based API --- The `spark.mllib` package supports various methods for [binary classification](http://en.wikipedia.org/wiki/Binary_classification), [multiclass classification](http://en.wikipedia.org/wiki/Multiclass_classification), and [regression analysis](http://en.wikipedia.org/wiki/Regression_analysis). The table below outlines the supported algorithms for each type of problem.
Problem TypeSupported Methods
Binary Classificationlinear SVMs, logistic regression, decision trees, random forests, gradient-boosted trees, naive Bayes
Multiclass Classificationlogistic regression, decision trees, random forests, naive Bayes
Regressionlinear least squares, Lasso, ridge regression, decision trees, random forests, gradient-boosted trees, isotonic regression
More details for these methods can be found here: * [Linear models](mllib-linear-methods.html) * [classification (SVMs, logistic regression)](mllib-linear-methods.html#classification) * [linear regression (least squares, Lasso, ridge)](mllib-linear-methods.html#linear-least-squares-lasso-and-ridge-regression) * [Decision trees](mllib-decision-tree.html) * [Ensembles of decision trees](mllib-ensembles.html) * [random forests](mllib-ensembles.html#random-forests) * [gradient-boosted trees](mllib-ensembles.html#gradient-boosted-trees-gbts) * [Naive Bayes](mllib-naive-bayes.html) * [Isotonic regression](mllib-isotonic-regression.html)