2024년도 1학기 시계열 분석 (IMEN677-01) 강의계획서

1. 수업정보

학수번호 IMEN677 분반 01 학점 3.00
이수구분 전공선택 강좌유형 강의실 강좌 선수과목
포스테키안 핵심역량
강의시간 월, 수 / 15:30 ~ 16:45 / 제4공학관 세미나실 [302/304호] 성적취득 구분 G

2. 강의교수 정보

전치혁 이름 전치혁 학과(전공) 산업경영공학과
이메일 주소 chjun@postech.ac.kr Homepage
연구실 전화
Office Hours Mon/Wed 13:30-14:30

3. 강의목표

This course deals with the basic theory and the recent development in time-series analysis, which will cover smoothing methods, Box-Jenkins type models such as moving average (MA) process, autoregressive (AR) process, ARMA, ARIMA, some state-space models. Multivariate time series such as VAR and ARCH/GARCH models will be also dealt with. Applications to economic and financial time series will be made.

4. 강의선수/수강필수사항

Probability and Statistics

5. 성적평가

participation and homeworks 20%
midterm exam 20%
final exam 40%
term paper 20%

6. 강의교재

도서명 저자명 출판사 출판년도 ISBN
Time Series Analysis: Univariate and Multivariate Methods W.W.S. Wei Pearson International Edition 2006
시계열분석및응용 (Time Series Analysis & Applications, in Korean) 전치혁 자유아카데미 2020

7. 참고문헌 및 자료

- Time Series Analysis by J. D. Hamilton, 1st Edition, Princeton University Press, 1994.
- Time Series Analysis: Forecasting and Control by G. E. P. Box, G. M. Jenkins, and G. C. Reinsel, 3rd Edition, Prentice Hall, 1994.
- Statistical Methods for Forecasting by B. Abraham and J. Ledolter, 1st or 2nd Edition, Wiley-Interscience, 1983 or 2005.
- The Analysis of Time Series: An Introduction by Chatfield, C., Chapman & Hall, 1984.
- Forecasting Methods for Management by Makridakis, S. and S.T. Wheelwright, 5th edition, Wiley, 1989.
- Forecasting Structural Time Series Models and the Kalman Filter by Harvey, A.C., Cambridge Univ. Press, 1989.
- Forecasting in Business and Econometrics by Granger, C.W.J., 2nd edition, Academic Press, 1989.
- Bayesian Forecasting and Dynamic Models by West, M. and J. Harrison, Springer-Verlag, 1989.
- P.J. Brockwell and R.A. Davis, Introduction to Time Series and Forecasting, second edition, 2002, Springer.

8. 강의진도계획

- Introduction
- Smoothing methods
- Stationary processes: AR, MA, ARMA
- ARMA models
- Spectral Analysis
- Modeling and Forecasting with ARMA Processes
- Nonstationary and Seasonal Time Series Models: ARIMA
- Multivariate Time Series: VAR, Impulse Response Function, Cointegration/Error Correction Models
- State space models

9. 수업운영

- 강의유형: 강의실 (대면) 강의
- 수업방식: 강의, 숙제, term project, 시험

10. 학습법 소개 및 기타사항

11. 장애학생에 대한 학습지원 사항

- 수강 관련: 문자 통역(청각), 교과목 보조(발달), 노트필기(전 유형) 등

- 시험 관련: 시험시간 연장(필요시 전 유형), 시험지 확대 복사(시각) 등

- 기타 추가 요청사항 발생 시 장애학생지원센터(279-2434)로 요청