The following node is available in the Open Source KNIME predictive analytics and data mining platform version 2.7.1. Discover over 1000 other nodes, as well as enterprise functionality at http://knime.com.

k-Means

This node outputs the cluster centers for a predefined number of clusters (no dynamic number of clusters). K-means performs a crisp clustering that assigns a data vector to exactly one cluster. The algorithm terminates when the cluster assignments do not change anymore.
The clustering algorithm uses the Euclidean distance on the selected attributes. The data is not normalized by the node (if required, you should consider to use the "Normalizer" as a preprocessing step).
If the optional PMML inport is connected and contains preprocessing operations in the TransformationDictionary those are added to the learned model. The node can be configured as follows:

Dialog Options

number of clusters
The number of clusters (cluster centers) to be created.
max number of iterations
The number of iterations after which the algorithm terminates, independent of the accuracy improvement of the cluster centers.

Ports

Input Ports
0 Input to clustering. All numerical values and only these are considered for clustering.
1 Optional PMML port object containing preprocessing operations.
Output Ports
0 The input data labeled with the cluster they are contained in.
1 PMML cluster model

Views

Cluster View
Displays the cluster prototypes in a tree-like structure, with each node containing the coordinates of the cluster center.
This node is contained in KNIME Base Nodes provided by KNIME GmbH, Konstanz, Germany.