Second-order polynomial models have been used extensively to approximate the relationship between a response variable and several continuous factors. However, sometimes polynomial models do not adequately describe the important features of the response surface. This article describes the use of fractional polynomial models. It is shown how the models can be fitted, an appropriate model selected, and inference conducted. Polynomial and fractional polynomial models are fitted to two published datasets, illustrating that sometimes the fractional polynomial can give as good a fit to the data and much more plausible behavior between the design points than the polynomial model. © 2005 American Statistical Association and the International Biometr...
P(enalized)-splines and fractional polynomials (FPs) have emerged as powerful smoothing techniques w...
Objective: To show how fractional polynomial methods can usefully replace the practice of arbitraril...
A new - parsimonious but flexible - class of non-linear models, based on Fractional Polynomials, is ...
Low-order polynomial models often do not fit curvilinear relationships well. Even if these models pr...
Fractional polynomials (FP) have been shown to be much more flexible than polynomials for fitting co...
Fractional polynomial models are potentially useful for response surface investigations. With the av...
In response surface models the expected response is usually taken to be a low degree polynomial in t...
Imprecise theories do not give enough guidelines for empirical analyses. A paradigmatic shift from l...
Two level fractional factorial designs with a star are often used when working with lower polynomial...
In epidemiologic studies, researchers often need to establish a nonlinear exposure-response relation...
In multivariable model-building interactions between two continuous predictors are often ignored. If...
Non-linear relationships can be modeled by various approaches such as polynomials, splines, and frac...
The multivariable fractional polynomial (MFP) procedure combines variable selection with a function ...
Fractional polynomial response surface models are polynomial models whose powers are restricted to a...
This paper sets out to implement the Bayesian paradigm for fractional polynomial models under the as...
P(enalized)-splines and fractional polynomials (FPs) have emerged as powerful smoothing techniques w...
Objective: To show how fractional polynomial methods can usefully replace the practice of arbitraril...
A new - parsimonious but flexible - class of non-linear models, based on Fractional Polynomials, is ...
Low-order polynomial models often do not fit curvilinear relationships well. Even if these models pr...
Fractional polynomials (FP) have been shown to be much more flexible than polynomials for fitting co...
Fractional polynomial models are potentially useful for response surface investigations. With the av...
In response surface models the expected response is usually taken to be a low degree polynomial in t...
Imprecise theories do not give enough guidelines for empirical analyses. A paradigmatic shift from l...
Two level fractional factorial designs with a star are often used when working with lower polynomial...
In epidemiologic studies, researchers often need to establish a nonlinear exposure-response relation...
In multivariable model-building interactions between two continuous predictors are often ignored. If...
Non-linear relationships can be modeled by various approaches such as polynomials, splines, and frac...
The multivariable fractional polynomial (MFP) procedure combines variable selection with a function ...
Fractional polynomial response surface models are polynomial models whose powers are restricted to a...
This paper sets out to implement the Bayesian paradigm for fractional polynomial models under the as...
P(enalized)-splines and fractional polynomials (FPs) have emerged as powerful smoothing techniques w...
Objective: To show how fractional polynomial methods can usefully replace the practice of arbitraril...
A new - parsimonious but flexible - class of non-linear models, based on Fractional Polynomials, is ...