Node Connectivity

There are 5580 nodes that can be used as predessesor for a node with an input port of type Generic Port.

SimpleLinearRegression (3.6) (legacy) 

Learns a simple linear regression model. Picks the attribute that results in the lowest squared error. Missing values are not allowed. Can only deal with […]

SimpleLogistic (3.6) (legacy) 

Classifier for building linear logistic regression models. LogitBoost with simple regression functions as base learners is used for fitting the logistic […]

VotedPerceptron (3.6) (legacy) 

Implementation of the voted perceptron algorithm by Freund and Schapire. Globally replaces all missing values, and transforms nominal attributes into binary […]

Winnow (3.6) (legacy) 

Implements Winnow and Balanced Winnow algorithms by Littlestone. For more information, see N. Littlestone (1988). Learning quickly when irrelevant […]

IB1 (3.6) (legacy) 

Nearest-neighbour classifier. Uses normalized Euclidean distance to find the training instance closest to the given test instance, and predicts the same […]

IBk (3.6) (legacy) 

K-nearest neighbours classifier. Can select appropriate value of K based on cross-validation. Can also do distance weighting. For more information, see D. […]

KStar (3.6) (legacy) 

K* is an instance-based classifier, that is the class of a test instance is based upon the class of those training instances similar to it, as determined by […]

LBR (3.6) (legacy) 

Lazy Bayesian Rules Classifier. The naive Bayesian classifier provides a simple and effective approach to classifier learning, but its attribute […]

LWL (3.6) (legacy) 

Locally weighted learning. Uses an instance-based algorithm to assign instance weights which are then used by a specified WeightedInstancesHandler. Can do […]

ClassBalancedND (3.6) (legacy) 

A meta classifier for handling multi-class datasets with 2-class classifiers by building a random class-balanced tree structure. For more info, check Lin […]