Numeric Distances

Distance definition on numerical column(s), like for instance Euclidean or Manhattan distance. Parameters for missing value handling and normalization can be set depending on the selected distance function.

Options

Column Selection
Choose the columns for which the numeric distance measure is defined.
Distance Selection
Select and configure the distance to be used for measurement. Additional information is available through the help button in the configuration dialog.

Standard Distance (Euclidean/ Manhattan)
The Minkowski or Lp-Norm distance generalizes the Euclidean or Manhattan distance

Cosine Distance
Cosine similarity is a measure of similarity between two vectors of an inner product space that measures the cosine of the angle between them. This distance function is 1 - cosine-similarity and can take range [0,2].

Input Ports

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Input data.

Output Ports

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The configured distance.

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