Course length: | 7 weeks (4 lessons plus overview of multivariate methods) |
Price: | USD 295 |
Course leaders: | Miguel Dorta and Gustavo Sánchez |
Prerequisites: | Stata 17 installed and working. |
Lesson 1
Lesson 2
Lesson 3
Lesson 4
Bonus
Lesson 1
Introduction
- Course outline
- Follow along
- What is so special about time-series analysis?
- Time-series data in Stata
- The basics
- Clocktime data
- Time-series operators
- The lag operator
- The difference operator
- The seasonal difference operator
- Combining time-series operators
- Working with time-series operators
- Parentheses in time-series expressions
- Percentage changes
- Drawing graphs
- Basic smoothing and forecasting techniques
- Four components of a time series
- Moving averages
- Exponential smoothing
- Holt–Winters forecasting
Lesson 2
Descriptive analysis of time series
- The nature of time series
- Stationarity
- Autoregressive and moving-average processes
- Moving-average processes
- Autoregressive processes
- Stationarity of AR processes
- Invertibility of MA processes
- Mixed autoregressive moving-average processes
- The sample autocorrelation and partial autocorrelation functions
- A detour
- The sample autocorrelation function
- The sample partial autocorrelation function
- A brief introduction to spectral analysis—The periodogram
Lesson 3
Forecasting II: ARIMA and ARMAX models
- Basic ideas
- Forecasting
- Two goodness-of-fit criteria
- More on choosing the number of AR and MA terms
- Seasonal ARIMA models
- Additive seasonality
- Multiplicative seasonality
- ARMAX models
- Intervention analysis and outliers
- Final remarks on ARIMA models
Lesson 4
Regression analysis of time-series data
- Basic regression analysis
- Autocorrelation
- The Durbin–Watson test
- Other tests for autocorrelation
- Estimation with autocorrelated errors
- The Newey–West covariance matrix estimator
- ARMAX estimation
- Cochrane–Orcutt and Prais–Winsten methods
- Lagged dependent variables as regressors
- Dummy variables and additive seasonal effects
- Nonstationary series and OLS regression
- Unit-root processes
- ARCH
- A simple ARCH model
- Testing for ARCH
- GARCH models
- Extensions
Bonus
Bonus lesson: Overview of multivariate time-series analysis using Stata
- VARs
- The VAR(p) model
- Lag-order selection
- Diagnostics
- Granger causality
- Forecasting
- Impulse–response functions
- Orthogonalized IRFs
- VARX models
- VECMs
- A basic VECM
- Fitting a VECM in Stata
- Impulse–response analysis