Please use this identifier to cite or link to this item: http://repository.ipb.ac.id/handle/123456789/59477
Title: The ACE algorithm for optimal transformations in multiple
Other Titles: The 3rd International Conference on Mathematics and Statistics (ICoMS-3) Institut Pertanian Bogor, Indonesia, 5-6 August 2008
Authors: Sadik, Kusman
Keywords: Alternating conditional expectations
non-restrictive transformations
parametric transformations
multivariate analysis
generalized additive models
Issue Date: 2008
Publisher: Bogor Agricultural University
Abstract: We employed the Alternating Conditional Expectations (ACE) technique (Breiman & Friedman, 1985) to relax the assumption of model linearity. By generating non-restrictive transformations for both the dependent and independent variables, ACE develops regression models that can provide much better model fits compared to models produced by standard linear techniques such as Ordinary Least Squares. The ACE transformations can reveal new information and insights on the relationship between the independent and dependent variables. The objective of fiilly exploring and explaining the effect of covariates on a response variable in regression analysis is facilitated by properly transforming the independent variables. A number of parametric transformations for continuous variables in regression analysis have been suggested (Box and Tidwell, 1962;Kruskal, 1965; Mosteller and Tukey, 1977; Cook and Weisberg, 1982; Carroll and Ruppert, 1988; Royston, 2000). In this paper, we introduce the ACE algorithm for estimating optimal transformations for both response and independent variables in regression and correlation analysis, and illustrate through two examples that usefulness of ACE guided transformation in multivariate analysis. The power of the ACE approach lies in its ability to recover the functional forms of variables and to uncover complicated relationships.
URI: http://repository.ipb.ac.id/handle/123456789/59477
ISBN: 987-979-19256-0-0
Appears in Collections:Proceedings



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