A Modelling Framework for Regression with Collinearity
Takeaki Kariya, Hiroshi Kurata, Takaki Hayashi

TL;DR
This paper introduces a new modelling framework addressing collinearity in OLS regression by combining model selection processes that control for inefficiency and collinearity, improving stability and interpretability.
Contribution
It proposes the EEM-M methodology, integrating two model selection processes to better handle collinearity and inefficiency in regression models.
Findings
Developed the concept of empirically effective modelling (EEM)
Proposed the EEM-M methodology with two model selection processes
Introduced algorithms to implement the XMSP for collinearity control
Abstract
This study addresses a fundamental, yet overlooked, gap between standard theory and empirical modelling practices in the OLS regression model with collinearity. In fact, while an estimated model in practice is desired to have stability and efficiency in its "individual OLS estimates", itself has no capacity to identify and control the collinearity in and hence no theory including model selection process (MSP) would fill this gap unless is controlled in view of sampling theory. In this paper, first introducing a new concept of "empirically effective modelling" (EEM), we propose our EEM methodology (EEM-M) as an integrated process of two MSPs with data given. The first MSP uses only, called the XMSP, and pre-selects a class of models with…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Fuzzy Systems and Optimization
