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Knot selection for least-squares and penalized splines
Authors:Steven Spiriti  Randall Eubank  Philip W. Smith  Dennis Young
Affiliation:1. School of Mathematical and Statistical Sciences , Arizona State University , Tempe , AZ , 85287 , USA stochasticsteven@yahoo.com;3. School of Mathematical and Statistical Sciences , Arizona State University , Tempe , AZ , 85287 , USA;4. Texas Tech High Performance Computing Center , Texas Tech University , Lubbock , TX , 79409 , USA
Abstract:
Two new stochastic search methods are proposed for optimizing the knot locations and/or smoothing parameters for least-squares or penalized splines. One of the methods is a golden-section-augmented blind search, while the other is a continuous genetic algorithm. Monte Carlo experiments indicate that the algorithms are very successful at producing knot locations and/or smoothing parameters that are near optimal in a squared error sense. Both algorithms are amenable to parallelization and have been implemented in OpenMP and MPI. An adjusted GCV criterion is also considered for selecting both the number and location of knots. The method performed well relative to MARS in a small empirical comparison.
Keywords:blind random search  generalized cross-validation  genetic algorithm  golden section   parallel computing
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