1. To develop an understanding of the specification, estimation and interpretation of simple linear regression models.
2. To acquaint the students with the estimation and use of multiple linear regression models and various functional forms of the regression model.
3. To appraise the students with the detection, effects and remedial methods of multicollinearity, heteroscedasticity and autocorrelation problems.
Scope and Methodology of Econometrics, types and sources of data
Assumptions for estimation, Simple Linear Regression Model- OLS estimation, properties of OLS Regression line, properties of OLS Estimators, Statistical inference of SLRM, goodness of fit, Analysis of Variance on regression,Regression without intercept term- hypothesis testing and goodness of fit, Reverse regression, outliers.
Definition, specifications and assumptions, OLS estimation, properties of OLS Estimators, goodness of fit, inferences in MLRM- testing the significance of individual regression coefficients, testing the overall significance of regression, testing relevance of an additional explanatory variable, testing validity of linear equality restriction.
Definition, sources and consequences, methods of detection- Graphical, Breusch-Pagan-Godfrey test, Glejser test, Goldfeld-Quandt test, White’s test, remedial measures- Based on idea about form of heteroscedasticity, Generalised Least Squares, Weighted Least Squares, Heteroscedasticity-Consistent Estimator, general measures.
Definition, sources and consequences, specification of Autocorrelation relationship, tests for Autocorrelation- Graphical, Durbin-Watson test, Theil-Nagar correction to Durbin-Watson d-statistic, Durbin’s h-test, Breusch-Godfrey Lagrange Multiplier test, remedial measures- When value of ρ is known and when value of ρ is not known, Heteroscedasticity and Autocorrelation Consistent Standard Errors.
Definition, sources and consequences(absence of multicollinearity, perfect multicollinearity and imperfect multicollinearity), tests for Multicollinearity- Correlation Analysis, Klein’s rule of thumb, Variance-Inflation Factor, Tolerance, Condition Number, remedial measures- Increasing sample size, Transformation of variables, using extraneous estimate, dropping variables, other methods.