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A Self-Organizing Model for Logic Regression

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Abstract (2. Language): 
Logic regression, as developed by Ruczinski, Kooperberg, and LeBlanc [1], is a multivariable regression methodology that constructs logical relationships among Boolean predictor variables that best predicts a Boolean dependent variable. More specifically, it finds a regression model of the form 01122[|]mmgEYbbLbLbL=+++ where both the coefficients 01,,...,mbbb and the logical expressions,1,...,jLjm= are determined, whereby a logical expression one means logical relationships among the predictor variables, such as 12",XX are true but not 5"X , or 357",,XXXare true but not 1X or 2"X In paper [1] the authors investigate the use a simulated annealing algorithm. In this paper. the Group Method of Data Handling (GMDH) is used.
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[1] I. Ruczinski, C. Kooperberg, and M. LeBlanc. Logic Regression. Journal of Computational and Graphical Statistics 12(3), 475-511, 2003. [2] S. J. Farlow. Self-organizing Methods in Modeling. GMDH Type Algorithms, S. J. Farlow, editor. Marcel Dekker , 1984.

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