Time Series Analysis: Lecture Notes
Welcome!
These are the lecture notes for EN.553.439/639 Time Series Analysis, based on the Cryer and Chen textbook Time Series Analysis: With Applications in R and Time Series Lecture notes of Dr Torcaso.
The notes are typed by Yue Wu. The notes are authored and maintained by Sergey Kushnarev, and include:
- Topic summaries
- Mathematical derivations
- R notebooks with code and data examples
- Figures and simulation results
Think of these notes as a companion to our lectures and discussions, not a substitute. You’ll likely spot some typos and errors, so always double-check with the textbook and other course materials. If you catch an issue or have a question, please don’t hesitate to reach out to me via email or during office hours.
📚 Lecture Notes
- Lecture 1: Introduction to Time Series Analysis
- Lecture 2: Stationarity
- Lecture 3: Q-dependent CLT. MA(q), General Linear Process. Causality
- Lecture 4: AR(1), Yule-Walker method, AR-polynomial
- Lecture 5: AR(p): causality, YW method, GLP representation,
- Lecture 6: Recursive equations, ACVF for AR(2), AR(p), Invertibility
- Lecture 7: ARMA(1,1), ARMA(p,q): GLP representation, YW method, ACVF.
- Lecture 8: Trends, Estimation of the mean Yt, Rnotebook: regression approach, residual analysis
- Lecture 9: Residual Analysis. Sample ACF
- Lecture 10: ARIMA(\(p,d,q\)), Overdifferencing, GLP-like representation
- Lecture 11: Transformations of TS, sample ACF, Bartletts Theorem, Hypothesis test for MA(q)
- Lecture 12: PACF, sample PACF, Durbin-Levinson recursion
- Lecture 13: EACF, Specification of some TS, Unit Root test.
- Lecture 14: Parameter Estimation: method of moments
- Lecture 15: Parameter Estimation: Method of Moments, conditional least squares
- Lecture 16: Parameter Estimation: MLE, unconditional least squares
- Lecture 17: Diagnostics: residuals, overfitting
- Lecture 18: Forecasting
- Lecture 19: Forecasting: RW, ARMA(1,1), ARIMA, EWMA
- Lecture 20: SARIMA = Seasonal ARIMA
- Lecture 21: Cross-Correlation Function, Spurious Regression
- Lecture 22: Spurious Regression, Prewhitening
- Lecture 23: ARCH/GARCH Models
🔗 Resources
- [Course Syllabus (PDF)] TBD
- RStudio Cloud Project