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