Business 41914: Multivariate Time Series Analysis
Spring
Quarter of 2007
Instructor: Ruey S. Tsay
Office: HPC 455
Tel: 773-702-6750
Fax: 773-702-0458
e-mail: ruey.tsay@ChicagoGSB.edu
Lecture: Wednesdays 8:30 am to 11:30 am, HPC 04
Office hour: (a) Wednesdays 1:30 pm to
2:30 pm
(b) By appointment
You may e-mail me questions. E-mail is the easiest way
to make contact with me. I try to check the e-mail at least
once a day.
Teaching Assistant:
Mr. David Matteson, his e-mail: matteson@uchicago.edu
Text:
No textbook is used
Some
reference books:
(a) Time Series Analysis:
Forecasting and Control. Box, Jenkins and Reinsel (1994)
3rd Ed. Prentice Hall. Chapters 10
and 11.
(b) A Course in Time Series
Analysis: Pena, Tiao and Tsay (2001) Wiley
Chapters 14 and 15.
(c) Time Series Analysis by State Space Methods: Durbin and Koopman
(2001)
Oxford University Press, for Kalman
Filtering and Smoothing.
(d) Time Series Analysis: Hamilton (1994) Princeton University Press.
Chapters 11, 18, 19 & 20.
(e) Analysis of Financial Time Series, 2nd Ed., Tsay (2005), Wiley.
Chapters 8, 9, 10, & 11.
(f) Additional reference books given in the syllabus.
Some
reference articles:
1. Tiao, G. C. and Tsay, R. S. (1989). Model specification in multivariate time series (with discussion). Journal of Royal Statistical Society, Series B, 51, 157-213.
2. Tsay, R. S. (1991). Two canonical forms for vector ARMA processes. Statistica Sinica, 1, 247-269.
Course Syllabus.
Grading:
Midterm 40% + Final project 40% + Homework 20%
where scores of each component
are normalized to be out of 100.
Final project: An empirical
project or a research article
Midterm: May 9 (Lecture: 8:30-9:30 am, Exam 9:30-11:30 am)
Open books and notes. A calculator is needed.
Exam and Solutions
Lecture:
Week1: Transfer function model or distributed-lag model.
Chapters 10 & 11
of Box, Jenkins and Reinsel (1994).
Data set used: gas-furnace
Handout: lec1
Week2: Vector ARMA Models. Chapter 14 of Pena, Tiao and Tsay
(2002)
Data sets used: clsma1.dat clsar1.dat m-decile1510.txt
Handout: lec2 A simple R function to compute multivariate Ljung-Box: mq
Week 3: Vector ARMA Models (continued).
Data sets used:
gas-furnace (see Lecture 1), CGK
series
Handout: lec3
Week 4: Vector ARMA Models and Unit-Root Nonstationarity
Handout: lec4
Data set used: q-gdpun.txt (year, mm, dd, gdp, unemp-rate).
Week 5: Co-integration
Handout: lec5, Data set used: m-bnd.txt
Week 6: Structural Specification of VARMA Models
Handout: lec6,
Week 8: Empirical structural specification: R-Program--Kronid
Handout: lec7, data set: flour.dat
Week 9: Seasonal vector time series
Handout: lec8, data set: house.dat
Week 10: State-space models and the Kalman filter
Handout: lec9 data
set: aa-3rv.txt (5m, 10m, 20m)
Homework assignment:
HW1: due on April 4 (before class). Dataset: series
HW2: due on April 18. Data sets for Q1, Q2, Q3
HW3: due May 2. Data sets: m-mortg.txt, m-gs2.txt
HW4: due May 23. Data sets: (1) m-gs7.txt, m-gs2.txt, (2) hw4a.txt, (3) & (4) hw4b.txt
Solutions
to HW Assignments:
HW1 & output.
HW2 & output.
HW3.
Final
Project: Due on Week 10 (Friday)
(a) Individual project or a team of two students
(b) Theoretical project: journal article critique or empirical project:
real data
of vector time series (at least
2-dimensional).
(c) Students can also use empirical data to test any theorey
relevant to the course.
Computing:
SCA is used for most analyses. R and S-plus are also used for
Kalman filter and multivariate volatility modeling. Other packages
can also be used. We shall give some demonstrations in class.
Students may use other packages that are not discussed in class.
Old in-class exam: exam05 Scaoutput