This course provides an introduction to econometrics, focusing on its scope, foundational concepts, and practical applications in analyzing economic relationships. Learners will begin by exploring the distinctions between economic models and econometric models, gaining an understanding of how theory and data intersect in empirical research. The course introduces regression analysis, starting with simple linear regression involving one dependent and one independent variable, enabling students to examine the nature and strength of relationships between economic variables.

Econometrics - Theory and Practice

Recommended experience
Recommended experience
Beginner level
Ideal for learners with a basic understanding of economics and statistics and an interest in the application of data analysis to real-world economics
Recommended experience
Recommended experience
Beginner level
Ideal for learners with a basic understanding of economics and statistics and an interest in the application of data analysis to real-world economics
What you'll learn
Master the policy-making process, analyzing policy issues and stakeholder interests. Gain skills to assess policies and contribute to their creation.
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27 assignments
September 2025
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There are 7 modules in this course
In this module, you will learn about the scope of econometrics, economic models, and econometric models. You will then be introduced to regression analysis between one dependent variable and one independent variable. Further, you will revise the concepts of individual, conditional, and joint distributions and the concept of variable independence. Later, you will learn how to identify relationships between two variables. And lastly, you will explore the general nature of the linear regression model.
What's included
10 videos2 readings3 assignments
10 videos• Total 82 minutes
- Course Introduction• 3 minutes
- Pre-sessional Videos: Introduction to Stata–Part 1• 6 minutes
- Pre-sessional Videos: Introduction to Stata–Part 2• 9 minutes
- Pre-sessional Videos: Introduction to Stata–Part 3• 9 minutes
- Defining Econometrics, Economic Models, and Econometric Models • 8 minutes
- Types of Datasets • 7 minutes
- Nature of Variables in Empirical Analysis • 7 minutes
- Thinking About Two Variables Simultaneously• 9 minutes
- Equation of a Straight Line and Introduction to Population Regression Function• 14 minutes
- Covariance, Correlation, and Causation• 8 minutes
2 readings• Total 165 minutes
- Essential Reading: The Nature of Econometrics and Economic Data• 60 minutes
- Essential Reading: Understanding Relationship Between Variables• 105 minutes
3 assignments• Total 78 minutes
- Graded Quiz: Scope of Econometrics and Introduction to Simple Linear Equation• 60 minutes
- The Nature of Econometrics and Economic Data • 9 minutes
- Understanding Relationship between Variables• 9 minutes
In this module, you will learn about the theory and practice of simple linear regression with one dependent variable and one independent variable. Simple linear regression is a statistical method that allows us to summarize and study relationships between two variables and goes beyond exploring the simple correlation between them. You will first learn the estimation and interpretation of the estimators of a regression model. Then, you will be able to understand those estimators’ numerical and statistical properties. Lastly, you will work with some practical, functional forms to handle nonlinearities in regression models.
What's included
11 videos2 readings3 assignments
11 videos• Total 64 minutes
- Introduction to Sample Regression Function• 8 minutes
- Estimation and Interpretation of Ordinary Least Squares (OLS) Estimators• 8 minutes
- Numerical Properties of OLS Estimators• 6 minutes
- Measure of Goodness of Fit (R2)• 8 minutes
- Assumptions and Unbiasedness Property of OLS Estimators• 8 minutes
- Assumption of Homoskedasticity and Variance of OLS Estimators• 5 minutes
- Estimation of Error Variance and Precision Property of OLS Estimators• 6 minutes
- OLS Estimators When There Is no Intercept • 4 minutes
- Constant Percentage Effect Model: Log-Linear• 7 minutes
- Constant Elasticity Model: Double-Log• 2 minutes
- Semi-Elasticity Model: Lin-Log• 2 minutes
2 readings• Total 130 minutes
- Essential Reading: The Simple Linear Regression Model• 80 minutes
- Essential Reading: Functional Forms• 50 minutes
3 assignments• Total 93 minutes
- Graded Quiz: The Linear Regression Model With One Explanatory Variable• 60 minutes
- The Simple Linear Regression Model• 21 minutes
- Functional Forms• 12 minutes
In this module, you will move from the simple linear regression model with one regressor to the multiple linear regression model with two or more regressors. We use the adjective “simple” to denote that a model has only one regressor and the adjective “multiple” to indicate that a model has at least two regressors. In learning the practice of multiple linear regression, importance is accorded to building an intuitive understanding without using matrix algebra, mainly by analogy with simple linear regression. Lastly, you can derive and learn the algebraic properties of a regression model with k explanatory variables.
What's included
10 videos2 readings3 assignments
10 videos• Total 78 minutes
- An Overview of the Multiple Linear Regression Model• 8 minutes
- Estimation and Interpretation of OLS Estimators • 11 minutes
- Standard Assumptions and Unbiasedness Property• 10 minutes
- Measure of the Goodness of Fit in Multiple Regression and Adjusted R2 • 10 minutes
- Homoskedasticty Assumption and Precision Property• 8 minutes
- Including Irrelevant and Excluding Relevant Variables in a Regression Model• 6 minutes
- Regression Through Origin• 4 minutes
- Changes in Scale of Dependent and Independent Variables• 7 minutes
- Regression on Standardized Variables and Interpreting Beta Coefficients• 5 minutes
- Regression When the Explanatory Variable Is Binary in Nature• 9 minutes
2 readings• Total 190 minutes
- Essential Reading: The Multiple Linear Regression Model• 90 minutes
- Essential Reading: Extensions of Multiple Linear Regression Model• 100 minutes
3 assignments• Total 90 minutes
- Graded Quiz: The Linear Regression Model with Multiple Explanatory Variables• 60 minutes
- The Multiple Linear Regression Model • 15 minutes
- Extensions of Multiple Linear Regression Model • 15 minutes
In this module, you will continue with the multiple linear regression model and use that to learn statistical inference, allowing you to infer something about the population model from a random sample. The sixth assumption of the classical linear model is the additional assumption that the population error is normally distributed. In the model, you will understand the sample distributions of the OLS estimators. Further, you will be able to review how to carry out a hypothesis test, assuming the six assumptions are true. You will also be able to do several specifications of hypothesis testing, including restrictions on a single parameter, a combination of two parameters, exclusion restrictions, tests of overall significance, and multiple linear restrictions. To conclude, you will be using the t-statistic and F-statistic.
What's included
12 videos4 readings5 assignments
12 videos• Total 81 minutes
- Normality of the Error Term and the OLS Estimators• 9 minutes
- Preliminaries to Hypothesis Testing• 3 minutes
- Steps in Hypothesis Testing for a Single Parameter: t- Statistic• 9 minutes
- Hypothesis Testing for a Single Parameter: Hypothesized Value-0• 6 minutes
- Hypothesis Testing for a Single Parameter: Hypothesized Value-Constant• 6 minutes
- Drawing Statistical Inference Using Confidence Interval• 10 minutes
- Stating the Hypothesis with Single Linear Restriction Involving Two Parameters• 4 minutes
- Deriving the t-Statistic for a Single Linear Restriction Involving Two Parameters• 7 minutes
- Stating the Hypothesis for Testing Multiple Exclusion Restrictions• 5 minutes
- Derivation of the F Statistic in Case of Multiple Exclusions• 10 minutes
- The R-Squared Form of the F Statistic• 6 minutes
- Stating the Hypothesis and Deriving the F Statistic for General Linear Restrictions• 7 minutes
4 readings• Total 105 minutes
- Essential Reading: Classical Linear Model (CLM)• 10 minutes
- Essential Reading: Hypothesis Testing for a Single Population Parameter: The t Test• 45 minutes
- Essential Reading: Hypothesis Testing for a Single Linear Combination of the Parameters • 20 minutes
- Essential Reading: Hypothesis Testing Using the F-Test • 30 minutes
5 assignments• Total 96 minutes
- Graded Quiz: Hypothesis Testing and Statistical Inference• 60 minutes
- Classical Linear Model (CLM)• 3 minutes
- Hypothesis Testing for a Single Population Parameter: The t Test• 15 minutes
- Hypothesis Testing for a Single Linear Combination of the Parameters• 6 minutes
- Hypothesis Testing Using the F Test• 12 minutes
In this module, you will continue with the multiple linear regression model and explore the asymptotic properties of the OLS estimators, which holds true when you transition from a small sample to a large sample. These properties are also known as the large sample properties. Post OLS asymptotics, you will learn about some extensions of the linear regression model, which are mostly used in applied work. You will further explore regression models, which are three different functional forms of explanatory models. Starting with the case when you have quadratic terms of the explanatory variable, you will discuss regression models with categorical explanatory variables. Finally, you will understand the regression models involving the interaction of explanatory variables as regressors.
What's included
8 videos4 readings5 assignments
8 videos• Total 60 minutes
- Consistency: Law of Large Numbers• 8 minutes
- Asymptotic Normality and Asymptotic Efficiency: Central Limit Theorem• 7 minutes
- Regression with Quadratic Terms of Explanatory Variables• 8 minutes
- Regression when Explanatory Variable is Categorical in Nature• 10 minutes
- Conceptual Understanding of Interaction Terms in a Regression Model• 7 minutes
- Empirical Illustration of Interactions Between Two Continuous Regressors• 8 minutes
- Empirical Illustration of Interactions Between One Continuous and One Dummy Regressor • 6 minutes
- Empirical Illustration of Interactions Between Two Dummy Regressors • 6 minutes
4 readings• Total 60 minutes
- Essential Reading: OLS Asymptotic• 20 minutes
- Essential Reading: Further Issues: Interpreting Quadratic Term in a Regression Model• 10 minutes
- Essential Reading: Further Issues: Interpreting Categorical Variables in a Regression Model• 10 minutes
- Essential Reading: Further Issues: Interpreting Interactions in a Regression Model• 20 minutes
5 assignments• Total 84 minutes
- Graded Quiz: OLS Asymptotics and Further Issues in Multiple Regression Analysis• 60 minutes
- OLS Asymptotic• 6 minutes
- Further Issues: Interpreting Quadratic Term in Regression Model• 3 minutes
- Further Issues: Interpreting Categorical Variables in a Regression Model• 3 minutes
- Further Issues: Interpreting Interactions in a Regression Model• 12 minutes
In this module, you will keep using the multiple linear regression model and analyze the standard linear regression model considering the three problems that crop up most frequently when analyzing cross-sectional data. You will learn, in particular, about the bias and inconsistency arising from omitting important variables, as well as the effects of multicollinearity and heteroscedasticity in your data. You will also learn how to identify multicollinearity and heteroscedasticity in your model, test for it, and correct it using various techniques.
What's included
8 videos3 readings4 assignments
8 videos• Total 58 minutes
- Omitted Variable Bias: The Simple Case• 10 minutes
- Biasedness and Inconsistency Due to Omitting Relevant Variables• 10 minutes
- Omitted Variable Bias: The General Case• 5 minutes
- Perfect and Imperfect Multicollinearity• 6 minutes
- Consequence, Detection, and Remedies to Solve Multicollinearity• 7 minutes
- Consequences of Heteroscedasticity• 6 minutes
- Testing for Heteroscedasticity in a Regression Model• 10 minutes
- Remedies to Solve the Problem of Heteroscedasticity in a Regression Model• 3 minutes
3 readings• Total 70 minutes
- Essential Reading: Issues with Multiple Regression Models – Omitted Variable Bias• 20 minutes
- Essential Reading: Issues with Multiple Regression Models: Multicollinearity• 10 minutes
- Essential Reading: Issues with Multiple Regression Models- Heteroscedasticity• 40 minutes
4 assignments• Total 84 minutes
- Graded Quiz: Critical Evaluation of the Classical Linear Regression Model-I• 60 minutes
- Issues with Multiple Regression Models – Omitted Variable Bias• 9 minutes
- Issues with Multiple Regression Models - Multicollinearity• 6 minutes
- Issues with Multiple Regression Models- Heteroscedasticity• 9 minutes
In this module, you will learn about data and specification errors commonly encountered in multiple linear models. You will also learn about the tests to check for model misspecification, using proxy as a possible solution for model misspecification. Further, you will be introduced to issues that crop due to measurement error in the dependent and independent variables. You will also gain an understanding of two advanced models. First is the binary response model, which is used when the dependent variable is binary in nature. Next, you will learn about the time series model. You will also get some insights into the problem of autocorrelation, which is usually encountered when we have specification errors in time series data.
What's included
11 videos3 readings4 assignments
11 videos• Total 70 minutes
- Model Misspecification: Omission of Relevant Variables• 6 minutes
- Testing Model Misspecification Due to Omission of Relevant Variables: F Test• 5 minutes
- Testing Model Misspecification Due to Omission of Relevant Variables: Ramsey Test• 6 minutes
- Using Proxy Variables for Unobserved Explanatory Variables• 8 minutes
- Properties of OLS Under Measurement Error in Dependent Variables• 6 minutes
- Properties of OLS Under Measurement Error in Independent Variables• 6 minutes
- Binary Dependent Variables: Linear Probability Model• 11 minutes
- Introduction to Time Series Regression• 9 minutes
- Violation of No Serial Correlation or Auto-Correlation Assumption• 5 minutes
- Formal Testing and Remedial Measure to Solve Autocorrelation• 7 minutes
- Course Wrap-Up Video• 2 minutes
3 readings• Total 75 minutes
- Essential Reading: Specification and Data Problems• 45 minutes
- Essential Reading: Advanced Topic 1: Binary Dependent Variable• 10 minutes
- Essential Reading: Advanced Topic 2: Time Series Regression • 20 minutes
4 assignments• Total 90 minutes
- Graded Quiz: Critical Evaluation of the Classical Linear Regression Model-II• 60 minutes
- Specification and Data Problems• 18 minutes
- Advanced Topic 1: Binary Dependent Variable• 3 minutes
- Advanced Topic 2: Time Series Regression • 9 minutes
Build toward a degree
This course is part of the following degree program(s) offered by O.P. Jindal Global University. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
Build toward a degree
This course is part of the following degree program(s) offered by O.P. Jindal Global University. If you are admitted and enroll, your completed coursework may count toward your degree learning and your progress can transfer with you.¹
O.P. Jindal Global University
M.A. in Public Policy
Degree · 24 - 36 months
¹Successful application and enrollment are required. Eligibility requirements apply. Each institution determines the number of credits recognized by completing this content that may count towards degree requirements, considering any existing credits you may have. Click on a specific course for more information.
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O.P. Jindal Global University is recognised as an Institution of Eminence by the Ministry of Education, Government of India. It is also ranked the No. 1 Private University in India in the QS World University Rankings 2021. The university has 9000+ students across 12 schools that offer 52 degree programs. The university maintains a 1:9 faculty-student ratio. It is a research-intensive university, deeply committed to institutional values of interdisciplinary and innovative learning, pluralism and rigorous scholarship, globalism, and international engagement.
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