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Conditional logspline density estimation
Authors:Benoî  t R. M  acsse,Young K. Truong
Affiliation:Benoît R. Mâacsse,Young K. Truong
Abstract:In conditional logspline modelling, the logarithm of the conditional density function, log f(y|x), is modelled by using polynomial splines and their tensor products. The parameters of the model (coefficients of the spline functions) are estimated by maximizing the conditional log-likelihood function. The resulting estimate is a density function (positive and integrating to one) and is twice continuously differentiable. The estimate is used further to obtain estimates of regression and quantile functions in a natural way. An automatic procedure for selecting the number of knots and knot locations based on minimizing a variant of the AIC is developed. An example with real data is given. Finally, extensions and further applications of conditional logspline models are discussed.
Keywords:Akaike information criterion  Bayes information criterion  B-splines  maximum likelihood  stepwise knot deletion  regression-function estimation  quantile-function estimation  conditional density estimation
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