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Advanced Econometrics

2019/2020
Учебный год
ENG
Обучение ведется на английском языке
6
Кредиты
Статус:
Курс обязательный
Когда читается:
1-й курс, 2, 3 модуль

Преподаватели

Программа дисциплины

Аннотация

The course is designed for first-year graduate (Master) students following the programs “Finance” and “Applied Economics and Mathematical Methods”. Its main goal is to familiarize the students with advanced methods of econometric research in economics and finance. In particular, the course accentuates the problem of endogeneity and the ways to address it in the analysis of cross-sectional and panel data. The course is of applied nature: The material is presented, whenever possible, in a non-technical way, examples of empirical studies published in leading international economics and finance journals are discussed, and the lectures are supplemented by exercises in the computer lab.
Цель освоения дисциплины

Цель освоения дисциплины

  • Familiarize the students with advanced methods of econometric research in economics and finance.
Результаты освоения дисциплины

Результаты освоения дисциплины

  • Know key methods of econometric research, understand the causes and consequences of endogeneity, know the main methods for addressing this problem
  • Understand endogeneity as a key issue affecting causal inference; be able to critically examine existing research from this angle
  • Be able to apply the methods learnt when conducting own empirical analysis
  • Be familiar with and be able to use key capabilities of the statistical package “Stata”, including its programming options (the so-called do-files)
  • Understand the limits of interpreting regression results in most settings (the ceteris paribus clause).
Содержание учебной дисциплины

Содержание учебной дисциплины

  • Overview of the classical linear regression model
    L1.1. The classical linear regression model. OLS estimation. L1.2. Inference in the CLRM. L1.3. OLS asymptotics. L1.4. Specification and data issues. Reading: Wooldridge (2016), chapters 3-7; Hansen (2017), chapter 4, 7; Lecture notes.
  • Introduction to econometric package Stata
    CL1.1. Basic capabilities of Stata. Basic commands. Do and log files. CL1.2. The grammar of Stata. CL1.3. Creating and changing variables in Stata. Reading: Stata manual (2015); Lecture notes.
  • Endogeneity. Instrumental variables methods
    CL2.1. Key commands of regression analysis. Hypothesis testing and model diagnostics. Reading: Stata manual (2015); Lecture notes.
  • Analysis of panel (longitudinal) data
    L3.1. Examples of panel data. L3.2. Fixed and random effects models. L3.3. Model diagnostics (the Hausman test, etc.). L3.4. Two-way fixed effects models. L3.5. Endogenous explanatory variables. L3.6. The Hausman-Taylor model. L3.7. Dynamic panel data models. Reading: Wooldridge (2016), chapters 13-14.CL4.1. Fixed- and random-effects models in Stata. CL4.2. Model diagnostic (the Hausman test, etc.). CL4.3. The Hausman-Taylor model. CL4.4. Dynamic panel data models. Reading: Stata manual (2015); Lecture notes.
  • Estimation of treatment effects. The difference-in-difference estimator
    L4.1. Statistical setup. Selection on observables and selection on unobservables. Characterizing selection bias. L4.2. The difference estimators and the DiD. L4.3. Testing the key assumption of the DiD. Reading: Cerulli (2015), chapter 1, 3.4; Roberts and Whited (2013), chapter 4 (стр. 520-531).
  • Propensity score matching and regression discontinuity models
    5.1. Matching models. Treatment effects and necessary identifying assumptions. Propensity score matching. 5.2. Regression discontinuity (RD) models. Sharp and fuzzy regression discontinuity designs. Identification of treatment effects in the sharp RD. Reading: Cerulli (2015), chapter 2.3 and 4.3; Roberts and Whited (2013), chapters 5 (pp. 531-549) and 6 (pp. 549-557).
Элементы контроля

Элементы контроля

  • неблокирующий Created with Sketch. Экзамен
  • неблокирующий Created with Sketch. computer exercise
  • неблокирующий Created with Sketch. Empirical project
  • неблокирующий Created with Sketch. problem set 1
  • неблокирующий Created with Sketch. problem set 2
  • неблокирующий Created with Sketch. Test
Промежуточная аттестация

Промежуточная аттестация

  • Промежуточная аттестация (3 модуль)
    0.12 * computer exercise + 0.06 * Empirical project + 0.06 * problem set 1 + 0.06 * problem set 2 + 0.2 * Test + 0.5 * Экзамен
Список литературы

Список литературы

Рекомендуемая основная литература

  • Giovanni Cerulli. (2015). Econometric Evaluation of Socio-Economic Programs. Springer. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsrep&AN=edsrep.b.spr.adstae.978.3.662.46405.2
  • Manuel, K. M., & Lunder, E. K. (2015). Contracting with Inverted Domestic Corporations: Answers to Frequently Asked Questions. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsbas&AN=edsbas.28A2DA72

Рекомендуемая дополнительная литература

  • Atanasov, V., & Black, B. (2016). Shock-Based Causal Inference in Corporate Finance and Accounting Research. Critical Finance Review, (2), 207. https://doi.org/10.1561/104.00000036
  • Bruce E. Hansen. (2013). Econometrics. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsbas&AN=edsbas.C0DB9E1E
  • Roberts, M. R., & Whited, T. M. (2013). Endogeneity in Empirical Corporate Finance1. Handbook of the Economics of Finance, 493. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsrep&AN=edsrep.h.eee.finchp.2.a.493.572