Machine learning terms/Decision Forests: Difference between revisions
(Created page with "*attribute sampling *axis-aligned condition *bagging *binary condition *condition *decision forest *decision tree *entropy *feature importances *gini impurity *gradient boosting *gradient boosted (decision) trees (GBT) *inference path *information gain *in-set condition *leaf *node (decision tree) *non-binary condition *oblique condition *out-of-bag evaluation (OOB evaluation) *permutation...") |
No edit summary |
||
Line 1: | Line 1: | ||
*[[attribute sampling]] | <noinclude>{{see also|Machine learning terms}}</noinclude>*[[attribute sampling]] | ||
*[[axis-aligned condition]] | *[[axis-aligned condition]] | ||
*[[bagging]] | *[[bagging]] |
Latest revision as of 16:48, 26 February 2023
- See also: Machine learning terms
- attribute sampling
- axis-aligned condition
- bagging
- binary condition
- condition
- decision forest
- decision tree
- entropy
- feature importances
- gini impurity
- gradient boosting
- gradient boosted (decision) trees (GBT)
- inference path
- information gain
- in-set condition
- leaf
- node (decision tree)
- non-binary condition
- oblique condition
- out-of-bag evaluation (OOB evaluation)
- permutation variable importances
- random forest
- root
- sampling with replacement
- shrinkage
- split
- splitter
- test
- threshold (for decision trees)
- variable importances
- wisdom of the crowd