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Ordinary least squares / Linear regression / Decision tree learning / Statistical model / Least squares / Akaike information criterion / Logistic regression / Generalized linear model / Parameter / Statistics / Regression analysis / Recursive partitioning
Date: 2014-07-02 15:58:31
Ordinary least squares
Linear regression
Decision tree learning
Statistical model
Least squares
Akaike information criterion
Logistic regression
Generalized linear model
Parameter
Statistics
Regression analysis
Recursive partitioning

Parties, Models, Mobsters: A New Implementation of Model-Based Recursive Partitioning in R Achim Zeileis Torsten Hothorn

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Source URL: cran.r-project.org

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