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PCA Python Data Function for Spotfire® 1.2.0


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Summary

This Python data function performs Principal Component Analysis (PCA) on a given numeric dataset.

Overview

This data function performs Principal Component Analysis (PCA) on a given numeric dataset. PCA is a method often used for dimensionality reduction that reduces a numeric dataset into one with a smaller set of variables that still captures the original dataset's information.

 

Installing the data function

Follow the online guide available here to register a data function in Spotfire.

 

Configuring the data function

Each data function may require inputs from the Spotfire analysis and will return outputs to the Spotfire analysis. For each data function, these need to be configured once the data function is registered. To learn about how to configure data functions in Spotfire please view this video:

For more information on Spotfire visit the Spotfire training page.

 

Data function library

There exists a large number of data functions covering various features. Feel free to review what is available on the Data Function Library.

Release 1.2.0

Published: November 2021

Changes to previous version:

  • Minor changes to parameter names and parameter types inside data function

Release includes:

  • Data function
  • Dxp with example usage
  • Documentation
  • License information

Release 1.1.0

Published: September 2021

Changes to previous version:

  • New ability to set ID columns before modeling

Release includes:

  • Data function
  • Dxp with example usage
  • Documentation
  • License information

Initial release (version 1.0.0)

Published: April 2021

Initial release includes:

  • Data function
  • Dxp with example usage
  • Documentation
  • License information

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