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PCDimension

Finding the Number of Significant Principal Components

Implements methods to automate the Auer-Gervini graphical Bayesian approach for determining the number of significant principal components. Automation uses clustering, change points, or simple statistical models to distinguish "long" from "short" steps in a graph showing the posterior number of components as a function of a prior parameter. See <doi:10.1101/237883>.

Functions (6)

PCDimension

Finding the Number of Significant Principal Components

v1.1.11
Apache License (== 2.0)
Authors
Kevin R. Coombes, Min Wang
Initial release
2019-05-06

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