On function-on-function regression: partial least squares approach

被引:0
作者
Ufuk Beyaztas
Han Lin Shang
机构
[1] Bartin University,Department of Statistics
[2] Australian National University,Research School of Finance, Actuarial Studies, and Statistics
来源
Environmental and Ecological Statistics | 2020年 / 27卷
关键词
Basis function; Functional data; NIPALS; Nonparametric smoothing; SIMPLS;
D O I
暂无
中图分类号
学科分类号
摘要
Functional data analysis tools, such as function-on-function regression models, have received considerable attention in various scientific fields because of their observed high-dimensional and complex data structures. Several statistical procedures, including least squares, maximum likelihood, and maximum penalized likelihood, have been proposed to estimate such function-on-function regression models. However, these estimation techniques produce unstable estimates in the case of degenerate functional data or are computationally intensive. To overcome these issues, we proposed a partial least squares approach to estimate the model parameters in the function-on-function regression model. In the proposed method, the B-spline basis functions are utilized to convert discretely observed data into their functional forms. Generalized cross-validation is used to control the degrees of roughness. The finite-sample performance of the proposed method was evaluated using several Monte-Carlo simulations and an empirical data analysis. The results reveal that the proposed method competes favorably with existing estimation techniques and some other available function-on-function regression models, with significantly shorter computational time.
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页码:95 / 114
页数:19
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