ECON 302 Econometrics IIMEF UniversityDegree Programs EconomicsGeneral Information For StudentsDiploma SupplementErasmus Policy Statement
Economics
Bachelor Length of the Programme: 4 Number of Credits: 240 TR-NQF-HE: Level 6 QF-EHEA: First Cycle EQF: Level 6

Ders Genel Tanıtım Bilgileri

School/Faculty/Institute Faculty of Econ., Admin. and Social Sciences
Course Code ECON 302
Course Title in English Econometrics II
Course Title in Turkish Ekonometri I
Language of Instruction EN
Type of Course Flipped Classroom
Level of Course Seçiniz
Semester Spring
Contact Hours per Week
Lecture: 3 Recitation: 0 Lab: 0 Other: 0
Estimated Student Workload 136 hours per semester
Number of Credits 5 ECTS
Grading Mode Standard Letter Grade
Pre-requisites ECON 301 - Econometrics I
Expected Prior Knowledge Knowledge of mathematical concepts and statistics
Co-requisites None
Registration Restrictions None
Overall Educational Objective The aim of the course is to provide students the scope and the methodology of econometrics.
Course Description This course is the second part of the course “Econometrics I” and the aim is to provide students the scope and the methodology of econometrics using different techniques. After a brief recap on the first part of the econometrics course, students will first be introduced to regression analysis with panel data. Later, the discussion will be extended to topics such as, regressions with binary explanatory variables, regressions with binary dependent variables, instrumental variable regressions, and time series regression. Each topic will be discussed as a theoretical approach and applications for every topic will be covered during the term. Students will model simple applications using Excel or STATA statistical software on a variety of datasets. The course is quantitatively rigorous and requires knowledge of mathematics and statistics. Upon successful completion of the course, students will be able to conduct simple econometric analysis using different models and gain insight into the interpretation of empirical economic research findings.
Course Description in Turkish Ekonometri dersinin ikinci kısmı olan bu dersın amacı, öğrencilerin ekonometr konusundaki temek bilgilerini kullanarak farklı teknikler öğrenmeleri bu teknikleri basit modellerde uygulayabilip yorumlayabiliyor olmalarını sağlamaktır. Ekonometrı I dersinin kısa bir özetinden sonra, öğrencilere öncelikle panel veri ile regresyon analizi konusu anlatılacaktır. Daha sonra, açıklayıcı değişkenlerle regresyonlar, bağımlı değişkenlerle regresyonlar, ve zaman serisi regresyonu gibi konulara değinilecektir. Her konu teorik olarak ele alınacak ve sonrasında konu uygulamalı örneklerle pekiştirilecektir. Öğrenciler, dönem boyunca çeşitli veri setleri üzerinde Excel veya STATA programını kullanarak basit uygulamalar modelleyeceklerdir. Ders başarı ile tamamlandığında, öğrenci, farklı modeller kullanarak basit ekonometrik analizler yapabiliyor olmalı ve öğrencinin ampirik ekonomik araştırma bulgularının yorumlanmasına ilişkin becerisini geliştirmiş olması beklenmektedir.

Course Learning Outcomes and Competences

Upon successful completion of the course, the learner is expected to be able to:
1) Interpret regression results from different techniques
2) Analyze economic data using standard linear regression model
3) Make inference from econometric models and evaluate related results.
4) Model simple applications and interpret the results.
Program Learning Outcomes/Course Learning Outcomes 1 2 3 4
1) Has a broad understanding of economics with a deep exposure to other social sciences and mathematics.
2) Demonstrates knowledge and skills in understanding the interactions of different areas of economics.
3) Displays a sound comprehension of microeconomic and macroeconomic theory.
4) Applies economic concepts to solve complex problems and enhance decision-making capability.
5) Uses quantitative techniques to analyze different economic systems.
6) Applies theoretical knowledge to analyze issues regarding Turkish and global economies.
7) Demonstrates proficiency in statistical tools and mainstream software programs to process and evaluate economic data.
8) Behaves according to scientific and ethical values at all stages of economic analysis: data collection, interpretation and dissemination of findings.
9) Uses written and spoken English effectively (at least CEFR B2 level) to exchange scientific information.
10) Exhibits individual and professional ethical behavior and social responsibility.
11) Displays learning skills necessary for further study with a high degree of autonomy

Relation to Program Outcomes and Competences

N None S Supportive H Highly Related
     
Program Outcomes and Competences Level Assessed by
1) Has a broad understanding of economics with a deep exposure to other social sciences and mathematics. H
2) Demonstrates knowledge and skills in understanding the interactions of different areas of economics. S
3) Displays a sound comprehension of microeconomic and macroeconomic theory. S
4) Applies economic concepts to solve complex problems and enhance decision-making capability. S
5) Uses quantitative techniques to analyze different economic systems. H
6) Applies theoretical knowledge to analyze issues regarding Turkish and global economies. N
7) Demonstrates proficiency in statistical tools and mainstream software programs to process and evaluate economic data. H
8) Behaves according to scientific and ethical values at all stages of economic analysis: data collection, interpretation and dissemination of findings. H
9) Uses written and spoken English effectively (at least CEFR B2 level) to exchange scientific information. S
10) Exhibits individual and professional ethical behavior and social responsibility. S
11) Displays learning skills necessary for further study with a high degree of autonomy S
Prepared by and Date NAROD ERKOL , February 2024
Course Coordinator NAROD ERKOL
Semester Spring
Name of Instructor Asst. Prof. Dr. NAROD ERKOL

Course Contents

Week Subject
1) Syllabus, Introduction, ECON 301 Recap
2) Recap on Linear Regression with Multiple Regressors
3) Regression with Panel Data
4) Regressions with Binary Explanatory Variables
5) Regressions with Binary Explanatory Variables: Application
6) Regressions with Binary Dependent Variables
7) Regressions with Binary Dependent Variables: Application
8) Midterm exam
9) Instrumental Variable Regression
10) Instrumental Variable Regression: Application
11) Times Series Regression and Forecasting
12) Time Series Regression and Forecasting: Application
13) Additional Topics in Time Series Regression
14) Review
15) Final Examination Period
16) Final Examination Period
Required/Recommended ReadingsStock, J. H., & Watson, M. W. (2020). Introduction to Econometrics (4th Edition). Pearson. Using R for Introductory Econometrics, Florian Heiss. Basic Econometrics, by D. Gujarati, McGraw-Hill, 5th edition. Applied Econometrics with R, by Kleiber and Zeileis, Springer-Verlag, 2008.
Teaching MethodsActive Learning Flipped Learning
Homework and ProjectsPre and post class assignments
Laboratory WorkNA
Computer UseYes
Other ActivitiesNA
Assessment Methods
Assessment Tools Count Weight
Quiz(zes) 4 % 10
Homework Assignments 2 % 15
Midterm(s) 1 % 35
Final Examination 1 % 40
TOTAL % 100
Course Administration erkoln@mef.edu.tr
02123953670
Course Instructor: Asst. Prof. Narod Erkol (erkoln@mef.edu.tr) Attendance/participation: Students are expected to prepare for the lecture via pre-class assignments, videos and reading materials. Students are responsible to follow the announcements, course materials available on Blackboard system. Formal use of e-mails: Students are expected to use their @mef accounts for email traffic. The instructor is only responsible for the information sent/received through Blackboard system and emails using @mef account. The course instructor assumes that any information sent through email will be received in 24 hours, unless a system problem occurs. Grading and evaluation: Evaluation will be based on the student learning outcomes. It is strongly recommended to complete all the work in a timely fashion. Late submissions will not be accepted. Missing projects: No make up unless a legitimate proof of absence is presented. Missing final exam: Faculty regulations. Academic integrity: All students of MEF University are expected to be honest and comply with academic integrity. Students are expected to do their own work and neither give nor receive unauthorized assistance. Disciplinary action will be taken in case of suspicion. Improper behavior, academic dishonesty and plagiarism: Law on Higher Education Article 54. Important: If the learner cannot collect at least 30 points from the activities other than the final exam, they can not take the final exam and will get an FZ grade.

ECTS Student Workload Estimation

Activity No/Weeks Calculation
No/Weeks per Semester
Course Hours 28 140
Homework Assignments 8 64
Midterm(s) 2 34
Final Examination 2 34
Total Workload 272
Total Workload/25 10.9
ECTS 5