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fdm2id (version 0.9.5)

meanshift-class: MeanShift model

Description

This class contains the model obtained by the MEANSHIFT method.

Arguments

Slots

cluster

A vector of integers indicating the cluster to which each point is allocated.

value

A vector or matrix containing the location of the classified local maxima in the support.

data

The leaning set.

kernel

A string indicating the kernel associated with the kernel density estimate that the mean shift is optimizing over.

bandwidth

Used in the kernel density estimate for steepest ascent classification.

alpha

A scalar tuning parameter for normal kernels.

iterations

The number of iterations to perform mean shift.

epsilon

A scalar used to determine when to terminate the iteration of a individual query point.

epsilonCluster

A scalar used to determine the minimum distance between distinct clusters.

See Also

MEANSHIFT