2ecbe02d5b
Replaces a number of occurences of `MLlib` in the documentation that were meant to refer to the `spark.mllib` package instead. It should clarify for new users the difference between `spark.mllib` (the package) and MLlib (the umbrella project for ML in spark). It also removes some files that I forgot to delete with #10207 Author: Timothy Hunter <timhunter@databricks.com> Closes #10234 from thunterdb/12212.
1.7 KiB
1.7 KiB
layout | title | displayTitle |
---|---|---|
global | Classification and Regression - spark.mllib | Classification and Regression - spark.mllib |
The spark.mllib
package supports various methods for
binary classification,
multiclass
classification, and
regression analysis. The table below outlines
the supported algorithms for each type of problem.
Problem Type | Supported Methods |
---|---|
Binary Classification | linear SVMs, logistic regression, decision trees, random forests, gradient-boosted trees, naive Bayes |
Multiclass Classification | logistic regression, decision trees, random forests, naive Bayes |
Regression | linear least squares, Lasso, ridge regression, decision trees, random forests, gradient-boosted trees, isotonic regression |
More details for these methods can be found here: