Fast K-Means Cluster Scoring | Vantage Analytics Library - Fast K-Means Cluster Scoring - Vantage Analytics Library

Vantage Analytics Library User Guide

Deployment
VantageCloud
VantageCore
Edition
Enterprise
IntelliFlex
Lake
VMware
Product
Vantage Analytics Library
Release Number
2.2.0
Published
March 2023
Language
English (United States)
Last Update
2024-01-02
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Product Category
Teradata Vantage

Fast K-Means Cluster Scoring uses a model output by Fast K-Means Clustering to score new data against centroids.

The input table for Fast K-Means Cluster Scoring has the same columns as Fast K-Means Clustering analyzed to build the model. The implicit assumption is that the underlying population distributions are the same.

In a single iteration, Fast K-Means Cluster Scoring assigns each input table row to a cluster, based on the Euclidean distance to each cluster centroid. It returns an output table of scores and optionally, a sample of rows in the output table.