CRAN
multinomineq 0.2.1
Bayesian Inference for Multinomial Models with Inequality Constraints
Released May 16, 2019 by Daniel W. Heck
Dependencies
Rglpk 0.6-4 quadprog 1.5-7 RcppArmadillo 0.9.500.2.0 RcppProgress 0.4.1 Rcpp coda 0.19-2 RcppXPtrUtils 0.1.1
Implements Gibbs sampling and Bayes factors for multinomial models with linear inequality constraints on the vector of probability parameters. As special cases, the model class includes models that predict a linear order of binomial probabilities (e.g., p[1] < p[2] < p[3] < .50) and mixture models assuming that the parameter vector p must be inside the convex hull of a finite number of predicted patterns (i.e., vertices). A formal definition of inequality-constrained multinomial models and the implemented computational methods is provided in: Heck, D.W., & Davis-Stober, C.P. (2019). Multinomial models with linear inequality constraints: Overview and improvements of computational methods for Bayesian inference. Journal of Mathematical Psychology, 91, 70-87.