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Seemingly unrelated regression tree

Authors
Kim, JaeohCho, HyungJun
Issue Date
19-May-2019
Publisher
TAYLOR & FRANCIS LTD
Keywords
Regression tree; seemingly unrelated regression; selection bias; nonparametric method
Citation
JOURNAL OF APPLIED STATISTICS, v.46, no.7, pp.1177 - 1195
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF APPLIED STATISTICS
Volume
46
Number
7
Start Page
1177
End Page
1195
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/65394
DOI
10.1080/02664763.2018.1538327
ISSN
0266-4763
Abstract
Nonparametric seemingly unrelated regression provides a powerful alternative to parametric seemingly unrelated regression for relaxing the linearity assumption. The existing methods are limited, particularly with sharp changes in the relationship between the predictor variables and the corresponding response variable. We propose a new nonparametric method for seemingly unrelated regression, which adopts a tree-structured regression framework, has satisfiable prediction accuracy and interpretability, no restriction on the inclusion of categorical variables, and is less vulnerable to the curse of dimensionality. Moreover, an important feature is constructing a unified tree-structured model for multivariate data, even though the predictor variables corresponding to the response variable are entirely different. This unified model can offer revelatory insights such as underlying economic meaning. We propose the key factors of tree-structured regression, which are an impurity function detecting complex nonlinear relationships between the predictor variables and the response variable, split rule selection with negligible selection bias, and tree size determination solving underfitting and overfitting problems. We demonstrate our proposed method using simulated data and illustrate it using data from the Korea stock exchange sector indices.
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College of Political Science & Economics (Department of Statistics)
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