bibtype C - Conference Paper (international conference)
ARLID 0555825
utime 20230316104816.5
mtime 20220321235959.9
title (primary) (eng) On kernel-based nonlinear regression estimation
specification
page_count 10 s.
media_type E
serial
ARLID cav_un_epca*0551773
ISBN 978-80-87990-25-4
title The 15th International Days of Statistics and Economics Conference Proceedings
page_num 450-459
publisher
place Slaný
name Melandrium
year 2021
editor
name1 Löster
name2 T.
editor
name1 Pavelka
name2 T.
keyword Nonlinear regression
keyword machine learning
keyword kernel smoothing
keyword regularization
keyword regularization networks
author (primary)
ARLID cav_un_auth*0345793
name1 Kalina
name2 Jan
institution UTIA-B
full_dept (cz) Stochastická informatika
full_dept (eng) Department of Stochastic Informatics
department (cz) SI
department (eng) SI
full_dept Department of Stochastic Informatics
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
author
ARLID cav_un_auth*0416837
name1 Vidnerová
name2 P.
country CZ
source
url http://library.utia.cas.cz/separaty/2021/SI/kalina-0555825.pdf
cas_special
project
project_id GA21-05325S
agency GA ČR
ARLID cav_un_auth*0409039
abstract (eng) This paper is devoted to two important kernel-based tools of nonlinear regression: the Nadaraya-Watson estimator, which can be characterized as a successful statistical method in various econometric applications, and regularization networks, which represent machine learning tools very rarely used in econometric modeling. This paper recalls both approaches and describes their common features as well as differences. For the Nadaraya-Watsonestimator, we explain its connection to the conditional expectation of the response variable. Our main contribution is numerical analysis of suitable data with an economic motivation and a comparison of the two nonlinear regression tools. Our computations reveal some tools for the Nadaraya-Watson in R software to be unreliable, others not prepared for a routine usage. On the other hand, the regression modeling by means of regularization networks is much simpler and also turns out to be more reliable in our examples. These also bring unique evidence revealing the need for a careful choice of the parameters of regularization networks
action
ARLID cav_un_auth*0422181
name International Days of Statistics and Economics /15./
dates 20210909
mrcbC20-s 20210911
place Prague
country CZ
RIV BA
FORD0 10000
FORD1 10100
FORD2 10102
reportyear 2023
presentation_type PR
inst_support RVO:67985556
permalink http://hdl.handle.net/11104/0330279
confidential S
arlyear 2021
mrcbU14 SCOPUS
mrcbU24 PUBMED
mrcbU34 WOS
mrcbU63 cav_un_epca*0551773 The 15th International Days of Statistics and Economics Conference Proceedings Melandrium 2021 Slaný 450 459 978-80-87990-25-4
mrcbU67 Löster T. 340
mrcbU67 Pavelka T. 340