We model sparse functional data from multiple subjects with a mixed-effects regression spline. In this model, the expected values for any subject (conditioned on the random effects) can be written as the sum of a population curve and a subject-specific deviate from this population curve. The population curve and the subject-specific deviates are both modeled as free-knot b-splines with k and k ′ knots located at tk and tk ′ , respectively. To identify the number and location of the “free ” knots, we sample from the posterior p (k, tk, k ′, tk ′ |y) using reversible jump MCMC methods. Sampling from this posterior distribution is complicated, however, by the flexibility we allow for the model’s covariance structure. No restrictions (other tha...
Summary: Increasingly, scientific studies yield functional data, in which the ideal units of observa...
In this article we construct simultaneous confidence bands for a smooth curve using penalized spline...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
We model sparse functional data from multiple subjects with a mixed-effects regression spline. In th...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
7Spline functions, defined as piecewise polynomials with a fixed degree, whose joint points are call...
We propose a method of analyzing collections of related curves in which the individual curves are mo...
Abstract: P-splines are a popular approach for fitting nonlinear effects of continuous covariates in...
Regression splines, based on piecewise polynomials, are useful tools to model departures from linear...
2011 Fall.Includes bibliographical references.Semi-parametric and non-parametric function estimation...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
This article describes a Bayesian-based method for solving curve fitting problems. We extend the bas...
In statistical research with populations having a multilevel structure, hierarchical models can pla...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
A Bayesian method is presented for the nonparametric modeling of univariate and multivariate non-Gau...
Summary: Increasingly, scientific studies yield functional data, in which the ideal units of observa...
In this article we construct simultaneous confidence bands for a smooth curve using penalized spline...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
We model sparse functional data from multiple subjects with a mixed-effects regression spline. In th...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
7Spline functions, defined as piecewise polynomials with a fixed degree, whose joint points are call...
We propose a method of analyzing collections of related curves in which the individual curves are mo...
Abstract: P-splines are a popular approach for fitting nonlinear effects of continuous covariates in...
Regression splines, based on piecewise polynomials, are useful tools to model departures from linear...
2011 Fall.Includes bibliographical references.Semi-parametric and non-parametric function estimation...
P-splines are a popular approach for fitting nonlinear effects of continuous covariates in semiparam...
This article describes a Bayesian-based method for solving curve fitting problems. We extend the bas...
In statistical research with populations having a multilevel structure, hierarchical models can pla...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
A Bayesian method is presented for the nonparametric modeling of univariate and multivariate non-Gau...
Summary: Increasingly, scientific studies yield functional data, in which the ideal units of observa...
In this article we construct simultaneous confidence bands for a smooth curve using penalized spline...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...