Node Connectivity

There are 99 nodes that can be used as predessesor for a node with an input port of type Weka 3.6 Classifier.

JRip (3.6) (legacy) 

This class implements a propositional rule learner, Repeated Incremental Pruning to Produce Error Reduction (RIPPER), which was proposed by William W. Cohen […]

M5Rules (3.6) (legacy) 

Generates a decision list for regression problems using separate-and-conquer. In each iteration it builds a model tree using M5 and makes the "best" leaf […]

NNge (3.6) (legacy) 

Nearest-neighbor-like algorithm using non-nested generalized exemplars (which are hyperrectangles that can be viewed as if-then rules). For more […]

OneR (3.6) (legacy) 

Class for building and using a 1R classifier; in other words, uses the minimum-error attribute for prediction, discretizing numeric attributes. For more […]

PART (3.6) (legacy) 

Class for generating a PART decision list. Uses separate-and-conquer. Builds a partial C4.5 decision tree in each iteration and makes the "best" leaf into a […]

Prism (3.6) (legacy) 

Class for building and using a PRISM rule set for classification. Can only deal with nominal attributes. Can't deal with missing values. Doesn't do any […]

Ridor (3.6) (legacy) 

An implementation of a RIpple-DOwn Rule learner. It generates a default rule first and then the exceptions for the default rule with the least (weighted) […]

ZeroR (3.6) (legacy) 

Class for building and using a 0-R classifier. Predicts the mean (for a numeric class) or the mode (for a nominal class).

Weka Classifier Reader (3.6) (legacy) 

Reads a weka classification model from a (zip) file.