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M.Com in Econometrics

Semester-wise Syllabus for M.Com in Econometrics

 

Semester 1: Core Foundations

1. Advanced Microeconomic Theory

  • Topics: Consumer choice (utility maximization), producer theory (cost minimization), general equilibrium, game theory (Nash equilibrium).

  • Tools: Lagrangian optimization, indifference curves, Cournot/Bertrand models.

  • Practical: Case studies on pricing strategies (e.g., sports leagues, e-commerce).

2. Macroeconomic Modeling

  • Topics: IS-LM framework, Solow growth model, New Keynesian economics, business cycle analysis.

  • Tools: Dynamic stochastic general equilibrium (DSGE) basics.

  • Software: Excel simulations of macroeconomic policies.

3. Mathematical Economics

  • Topics: Linear algebra (matrix operations), calculus (constrained optimization), difference/differential equations.

  • Application: Solving economic models like Ramsey growth.

4. Statistical Methods for Economics

  • Topics: Probability distributions (normal, binomial), hypothesis testing (t-tests, ANOVA), Bayesian inference.

  • Software Lab: R/Python for descriptive statistics.

5. Econometrics I: Linear Regression

  • Topics: OLS assumptions, Gauss-Markov theorem, multicollinearity, heteroskedasticity.

  • Practical: Stata/R exercises with real datasets (e.g., wage determinants).


Semester 2: Econometric Theory & Applications

1. Econometrics II: Violations & Remedies

  • Topics: Autocorrelation, heteroskedasticity (White’s test), instrumental variables (IV), logit/probit models.

  • Case Study: Impact of education on income using IV.

2. Time Series Econometrics

  • Topics: Stationarity (ADF test), ARIMA, VAR, cointegration (Engle-Granger).

  • Software: EViews for forecasting GDP/inflation.

3. Panel Data Analysis

  • Topics: Fixed vs. random effects, Hausman test, dynamic panels (Arellano-Bond).

  • Dataset: Analyzing firm performance across years.

4. Applied Econometrics Lab

  • Tools: Stata/R/Python for data cleaning, regression diagnostics.

  • Project: COVID-19’s economic impact using panel data.

5. Research Methodology

  • Focus: Thesis design, literature review, ethical considerations.


Semester 3: Specializations & Electives

Core Subjects

  1. Financial Econometrics

    • Topics: CAPM, ARCH/GARCH (volatility modeling), Value-at-Risk (VaR).

    • Software: Bloomberg Terminal/R for stock market analysis.

  2. Development Econometrics

    • Topics: RCTs, difference-in-differences (DiD), propensity score matching.

    • Case: Evaluating poverty alleviation programs.

Electives (Choose 1–2)

  • Behavioral Econometrics: Prospect theory applications.

  • Spatial Econometrics: GIS-based regional analysis.

  • Machine Learning for Economics: LASSO, random forests.

Seminar Series

  • Recent papers (e.g., "Predicting recessions using Twitter data").


Semester 4: Thesis & Advanced Topics

1. Thesis Work

  • Stages: Proposal defense, data collection, model estimation, viva voce.

  • Examples:

    • "Cryptocurrency volatility: A GARCH approach."

    • "Gender wage gap analysis using NSSO data."

2. Advanced Topics

  • Bayesian econometrics, structural equation modeling (SEM).

  • Guest Lectures: Central bank economists on policy modeling.

3. Internship (Optional)

  • Roles: RBI, NITI Aayog, or fintech firms.


Key Software & Tools

  • Stata: Primary for econometric analysis.

  • R/Python: Machine learning applications.

  • EViews: Time series forecasting.

  • Excel VBA: Macro-based economic models.