The estimation of functions with varying degrees of smoothness is a challenging problem in the nonparametric function estimation. In this paper, we propose the LABS (L\'{e}vy Adaptive B-Spline regression) model, an extension of the LARK models, for the estimation of functions with varying degrees of smoothness. LABS model is a LARK with B-spline bases as generating kernels. The B-spline basis consists of piecewise k degree polynomials with k-1 continuous derivatives and can express systematically functions with varying degrees of smoothness. By changing the orders of the B-spline basis, LABS can systematically adapt the smoothness of functions, i.e., jump discontinuities, sharp peaks, etc. Results of simulation studies and real data examples support that this model catches not only smooth areas but also jumps and sharp peaks of functions. The proposed model also has the best performance in almost all examples. Finally, we provide theoretical results that the mean function for the LABS model belongs to the certain Besov spaces based on the orders of the B-spline basis and that the prior of the model has the full support on the Besov spaces.
翻译:平滑度不同功能的估算是非参数函数估计中一个具有挑战性的难题。 在本文中,我们提议LABS(L\'{{{{{{{{{{{{{{{{{适应性B-Spline Regin)模型)模型,LARK模型的延伸,以不同程度的平稳度估算函数。 LABS模型是一个LARK模型,其B-spline基点为产生内核的B-Sprine基点。B-1连续衍生物的Prapisy kccial 多元模型构成一个具有k-1连续衍生物的Prapy 多边模型,能够以不同程度的平滑度系统地表达功能。通过改变B-spline基点的指令,LABS可以系统地调整功能的顺畅度,即跳动不动、尖锐峰值等。模拟研究和真实数据实例的结果证明,该模型不仅光滑动区域,而且还能跳跃和尖峰。提议的模型在几乎所有例子中都有最佳性。最后,我们提供了理论结果,即LABSB-B-spline基点模型的平均值属于某些贝索夫空间,而前的完全支持。