A computational approach to nonparametric regression: bootstrapping CMARS method

Verfasser / Beitragende:
[Ceyda Yazıcı, Fatma Yerlikaya-Özkurt, İnci Batmaz]
Ort, Verlag, Jahr:
2015
Enthalten in:
Machine Learning, 101/1-3(2015-10-01), 211-230
Format:
Artikel (online)
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024 7 0 |a 10.1007/s10994-015-5502-3  |2 doi 
035 |a (NATIONALLICENCE)springer-10.1007/s10994-015-5502-3 
245 0 2 |a A computational approach to nonparametric regression: bootstrapping CMARS method  |h [Elektronische Daten]  |c [Ceyda Yazıcı, Fatma Yerlikaya-Özkurt, İnci Batmaz] 
520 3 |a Bootstrapping is a computer-intensive statistical method which treats the data set as a population and draws samples from it with replacement. This resampling method has wide application areas especially in mathematically intractable problems. In this study, it is used to obtain the empirical distributions of the parameters to determine whether they are statistically significant or not in a special case of nonparametric regression, conic multivariate adaptive regression splines (CMARS), a statistical machine learning algorithm. CMARS is the modified version of the well-known nonparametric regression model, multivariate adaptive regression splines (MARS), which uses conic quadratic optimization. CMARS is at least as complex as MARS even though it performs better with respect to several criteria. To achieve a better performance of CMARS with a less complex model, three different bootstrapping regression methods, namely, random-X, fixed-X and wild bootstrap are applied on four data sets with different size and scale. Then, the performances of the models are compared using various criteria including accuracy, precision, complexity, stability, robustness and computational efficiency. The results imply that bootstrap methods give more precise parameter estimates although they are computationally inefficient and that among all, random-X resampling produces better models, particularly for medium size and scale data sets. 
540 |a The Author(s), 2015 
690 7 |a Bootstrapping regression  |2 nationallicence 
690 7 |a Conic multivariate adaptive regression splines  |2 nationallicence 
690 7 |a Fixed-X resampling  |2 nationallicence 
690 7 |a Random-X resampling  |2 nationallicence 
690 7 |a Wild bootstrap  |2 nationallicence 
690 7 |a Machine learning  |2 nationallicence 
700 1 |a Yazıcı  |D Ceyda  |u Department of Statistics, Middle East Technical University, Ankara, Turkey  |4 aut 
700 1 |a Yerlikaya-Özkurt  |D Fatma  |u Institute of Applied Mathematics, Middle East Technical University, Ankara, Turkey  |4 aut 
700 1 |a Batmaz  |D İnci  |u Department of Statistics, Middle East Technical University, Ankara, Turkey  |4 aut 
773 0 |t Machine Learning  |d Springer US; http://www.springer-ny.com  |g 101/1-3(2015-10-01), 211-230  |x 0885-6125  |q 101:1-3<211  |1 2015  |2 101  |o 10994 
856 4 0 |u https://doi.org/10.1007/s10994-015-5502-3  |q text/html  |z Onlinezugriff via DOI 
898 |a BK010053  |b XK010053  |c XK010000 
900 7 |a Metadata rights reserved  |b Springer special CC-BY-NC licence  |2 nationallicence 
908 |D 1  |a research-article  |2 jats 
949 |B NATIONALLICENCE  |F NATIONALLICENCE  |b NL-springer 
950 |B NATIONALLICENCE  |P 856  |E 40  |u https://doi.org/10.1007/s10994-015-5502-3  |q text/html  |z Onlinezugriff via DOI 
950 |B NATIONALLICENCE  |P 700  |E 1-  |a Yazıcı  |D Ceyda  |u Department of Statistics, Middle East Technical University, Ankara, Turkey  |4 aut 
950 |B NATIONALLICENCE  |P 700  |E 1-  |a Yerlikaya-Özkurt  |D Fatma  |u Institute of Applied Mathematics, Middle East Technical University, Ankara, Turkey  |4 aut 
950 |B NATIONALLICENCE  |P 700  |E 1-  |a Batmaz  |D İnci  |u Department of Statistics, Middle East Technical University, Ankara, Turkey  |4 aut 
950 |B NATIONALLICENCE  |P 773  |E 0-  |t Machine Learning  |d Springer US; http://www.springer-ny.com  |g 101/1-3(2015-10-01), 211-230  |x 0885-6125  |q 101:1-3<211  |1 2015  |2 101  |o 10994