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nz.ac.waikato.cms.weka : paceRegression

Maven & Gradle

Apr 26, 2012

paceRegression · Class for building pace regression linear models and using them for prediction. Under regularity conditions, pace regression is provably optimal when the number of coefficients tends to infinity. It consists of a group of estimators that are either overall optimal or optimal under certain conditions. The current work of the pace regression theory, and therefore also this implementation, do not handle: - missing values - non-binary nominal attributes - the case that n - k is small where n is the number of instances and k is the number of coefficients (the threshold used in this implmentation is 20) For more information see: Wang, Y (2000). A new approach to fitting linear models in high dimensional spaces. Hamilton, New Zealand. Wang, Y., Witten, I. H.: Modeling for optimal probability prediction. In: Proceedings of the Nineteenth International Conference in Machine Learning, Sydney, Australia, 650-657, 2002.

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Latest Version

Download nz.ac.waikato.cms.weka : paceRegression Javadoc & API Documentation - Latest Versions:

All Versions

Download nz.ac.waikato.cms.weka : paceRegression Javadoc & API Documentation - All Versions:

Version Size Javadoc Updated
1.0.x

How to open Javadoc JAR file in web browser

  1. Rename the file paceRegression-1.0.2-javadoc.jar to paceRegression-1.0.2-javadoc.zip
  2. Use your favourite unzip tool (WinRAR / WinZIP) to extract it, now you have a folder paceRegression-1.0.2-javadoc
  3. Double click index.html will open the index page on your default web browser.

How to generate Javadoc from a source JAR?

Running the command javadoc:

javadoc --ignore-source-errors -encoding UTF-8 -sourcepath "paceRegression-1.0.2-sources.jar" -d "paceRegression-1.0.2-javadoc" -subpackages 

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