Title of article
Monotone fitting for developmental variables
Author/Authors
Valentin Rousson، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
12
From page
659
To page
670
Abstract
In order to study developmental variables, for example, neuromotor development of children and
adolescents, monotone fitting is typically needed. Most methods, to estimate a monotone regression function
non-parametrically, however, are not straightforward to implement, a difficult issue being the choice
of smoothing parameters. In this paper, a convenient implementation of the monotone B-spline estimates
of Ramsay [Monotone regression splines in action (with discussion), Stat. Sci. 3 (1988), pp. 425–461]
and Kelly and Rice [Montone smoothing with application to dose-response curves and the assessment of
synergism, Biometrics 46 (1990), pp. 1071–1085] is proposed and applied to neuromotor data. Knots are
selected adaptively using ideas found in Friedman and Silverman [Flexible parsimonous smoothing and
additive modelling (with discussion), Technometrics 31 (1989), pp. 3–39] yielding a flexible algorithm to
automatically and accurately estimate a monotone regression function. Using splines also simultaneously
allows to include other aspects in the estimation problem, such as modeling a constant difference between
two groups or a known jump in the regression function. Finally, an estimate which is not only monotone
but also has a ‘levelling-off’ (i.e. becomes constant after some point) is derived. This is useful when the
developmental variable is known to attain a maximum/minimum within the interval of observation.
Keywords
non-negative least squares , Selection of variables , B-spline smoothing , F-tests , knots selection , leveling-off , Monotone regression
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2008
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712221
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