Robust Multicollinearity Diagnostic Measure For Fixed Effect Panel Data Model
Autor: | Shelan Saied Ismaeel, Habshah Midi, Muhammed Sani |
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Rok vydání: | 2021 |
Předmět: |
Variance inflation factor
Measure (data warehouse) General Mathematics General Physics and Astronomy Estimator General Chemistry Fixed effects model General Biochemistry Genetics and Molecular Biology Multicollinearity Statistics Ordinary least squares Leverage (statistics) General Agricultural and Biological Sciences Mathematics Panel data |
Zdroj: | Malaysian Journal of Fundamental and Applied Sciences. 17:636-646 |
ISSN: | 2289-599X 2289-5981 |
DOI: | 10.11113/mjfas.v17n5.2391 |
Popis: | It is now evident that high leverage points (HLPs) can induce the multicollinearity pattern of a data in fixed effect panel data model. Those observations that are responsible for this phenomenon are called high leverage collinearity-enhancing observations (HLCEO). The commonly used within group ordinary least squares (WOLS) estimator for estimating the parameters of fixed effect panel data model is easily affected by HLCEOs. In their presence, the WOLS estimates may produce large variances and this would lead to erroneous interpretation. Therefore, it is imperative to detect the multicollinearity which is caused by HLCEOs. The classical Variance Inflation Factor (CVIF) is the commonly used diagnostic method for detecting multicollinearity in panel data. However, it is not correctly diagnosed multicollinearity in the presence of HLCEOs. Hence, in this paper three new robust diagnostic methods of diagnosing multicollinearity in panel data are proposed, namely the RVIF (WGM-FIMGT), RVIF (WGM-DRGP) and RVIF (WMM) and compared their performances with the CVIF. The numerical evidences show that the CVIF incorrectly diagnosed multicollinearity but our proposed methods correctly diagnosed no multicollinearity in the presence of HLCEOs where RVIF (WGM-FIMGT) being the best method as it has the least computational running time. |
Databáze: | OpenAIRE |
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