학술논문

Applications of Robust Regression Techniques: An Econometric Approach.
Document Type
Article
Source
Mathematical Problems in Engineering. 5/29/2021, p1-9. 9p.
Subject
*LEAST squares
*TIME series analysis
*FORECASTING
*ECONOMETRIC models
*REGRESSION analysis
*COINTEGRATION
*VECTOR error-correction models
Language
ISSN
1024-123X
Abstract
Consistent estimation techniques need to be implemented to obtain robust empirical outcomes which help policymakers formulating public policies. Therefore, we implement the least squares (LS) and the high breakdown robust least trimmed squares (LTS) regression techniques, while using econometric regression model based on a growth equation for the two countries, namely, India and Pakistan. We used secondary annual time series data which covers a long period of 41 years. The adequacy of the time series econometric model was checked through cointegration analysis and found that there is no spurious regression. Classical and robust procedures were employed for the estimation of the parameters. The empirical results reveal that the overall fit of the model improves in case of LTS technique, while the significance of the predictors changes significantly in cases of both countries due to the removal of outliers from the data. Thus, empirical findings exhibit that the results, obtained through LTS, are better than LS techniques. [ABSTRACT FROM AUTHOR]