Approximation by B-spline convolution operators. A probabilistic approach
作者:
Highlights:
•
摘要
This paper is concerned with the approximation properties of convolution operators with respect to univariate B-splines. For such operators, we give rates of uniform convergence in terms of the usual second modulus of smoothness at a length which depends on the distances between the knots and their multiplicity. A reasonable balance between the degree of accuracy in the approximation and the degree of differentiability of the approximants is achieved by considering Steklov operators (built up from B-splines with equidistant simple knots), for which strong converse inequalities are given. Applications to simultaneous approximation and divided difference expansions, and to estimate the infinite time ruin probabilities in a context of risk theory are also provided. We use a probabilistic approach in the spirit of Karlin et al. (J. Multivariate Anal. 20 (1986) 69) and Ignatov and Kaishev (Serdica 15 (1989) 91) based on the representation of B-splines as the probability densities of linear combinations of uniform order statistics.
论文关键词:41A36,41A15,62G30,B-spline convolution operator,Steklov operator,Order statistics,Rate of convergence,Modulus of smoothness,Strong converse inequality,Simultaneous approximation,Divided difference expansion,Ruin probability,Risk model
论文评审过程:Received 16 December 2002, Revised 7 April 2004, Available online 1 June 2004.
论文官网地址:https://doi.org/10.1016/j.cam.2004.04.001