Title of article :
A variable selection approach to monotonic regression with Bernstein polynomials
Author/Authors :
S. McKay Curtis&Sujit K. Ghosh، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
One of the standard problems in statistics consists of determining the relationship between a response
variable and a single predictor variable through a regression function. Background scientific knowledge is
often available that suggests that the regression function should have a certain shape (e.g. monotonically
increasing or concave) but not necessarily a specific parametric form. Bernstein polynomials have been
used to impose certain shape restrictions on regression functions. The Bernstein polynomials are known
to provide a smooth estimate over equidistant knots. Bernstein polynomials are used in this paper due
to their ease of implementation, continuous differentiability, and theoretical properties. In this work, we
demonstrate a connection between the monotonic regression problem and the variable selection problem in
the linear model.We develop a Bayesian procedure for fitting the monotonic regression model by adapting
currently available variable selection procedures.We demonstrate the effectiveness of our method through
simulations and the analysis of real data.
Keywords :
Stochastic Search , Nonparametricregression , Gibbs sampling , Generalized linear models , Markov chain Monte Carlo , shape-restricted inference
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS