1. Introduction to Econometrics
- Definition and Scope
- What is econometrics?
- Relationship between econometrics, economics, and statistics.
- Methodology
- Steps in econometric analysis: formulation, estimation, inference, interpretation.
- Types of econometric models: cross-sectional, time series, panel data.
2. Simple Linear Regression Analysis
- Simple Linear Regression Model
- Formulation and assumptions.
- Interpretation of the regression equation: intercept, slope.
- Estimation
- Method of Ordinary Least Squares (OLS).
- Properties of OLS estimators: unbiasedness, consistency, efficiency.
- Inference
- Hypothesis testing: significance of coefficients.
- Confidence intervals.
3. Multiple Linear Regression Analysis
- Multiple Linear Regression Model
- Including multiple explanatory variables.
- Interpretation of coefficients.
- Model Specification
- Testing model specification: omitted variable bias, functional form.
- Goodness-of-Fit
- R-squared, adjusted R-squared.
- F-test for overall significance.
- Each unit can be covered in 10 to 12 hours.
- Requires good listening and home work
- can be conducted as tution also
- Basic statistics on request will be taught (seperate course)
- Mathematical economics will also be taught on request basis(seperate course)
- Charges are seperate for each course
- Can contact via urban pro
- Crashwork course in 2months can be completed (15 hours each month, cost is 18,000 per month) (If requested this crash course is also possible)