Title: Regression with Time Series Data
1Regression with Time Series Data
- Judge et al Chapter 15 and 16
2Distributed Lag
3Polynomial distributed lag
4Estimating a polynomial distributed lag
5Geometric Lag
Impact Multiplier change in yt when xt changes
by one unit
If change in xt is sustained for another period
Long-run multiplier
6The Koyck Transformation
7Autoregressive distributed lag
ARDL(1,1)
ARDL(p,q)
Represents an infinite distributed lag with
weights
Approximates an infinite lag of any shape when p
and q are large.
8Stationarity
- The usual properties of the least squares
estimator in a regression using time series data
depend on the assumption that the variables
involved are stationary stochastic processes. - A series is stationary if its mean and variance
are constant over time, and the covariance
between two values depends only on the length of
time separating the two values
9Stationary Processes
10Non-stationary processes
11Non-stationary processes with drift
12Summary of time series processes
- AR(1)
- Random walk
- Random walk with drift
- Deterministic trend
13Trends
- Stochastic trend
- Random walk
- Series has a unit root
- Series is integrated I(1)
- Can be made stationary only by first differencing
- Deterministic trend
- Series can be made stationary either by first
differencing or by subtracting a deterministic
trend.
14Real data
15Spurious correlation
16Spurious regression
Variable DF B Value Std Error T ratio Approx prob
Intercept 1 14.204040 0.5429 26.162 0.0001
RW2 1 -0.526263 0.00963 -54.667 0.0001
R2 0.7495 D-W 0.0305
17Checking/testing for stationarity
- Correlogram
- Shows partial correlation observations at
increasing intervals. - If stationary these die away.
- Box-Pierce
- Ljung-Box
- Unit root tests
18Unit root test
19Dickey Fuller Tests
- Allow for a number of possible models
- Drift
- Deterministic trend
- Account for serial correlation
Drift
Drift against deterministic trend
Adjusting for serial correlation (ADF)
20Critical values
Table 16.4 Critical Values for the Dickey-Fuller Test Table 16.4 Critical Values for the Dickey-Fuller Test Table 16.4 Critical Values for the Dickey-Fuller Test Table 16.4 Critical Values for the Dickey-Fuller Test
Model 1 5 10
?2.56 ?1.94 ?1.62
?3.43 ?2.86 ?2.57
?3.96 ?3.41 ?3.13
Standard critical values ?2.33 ?1.65 ?1.28
21Example of a Dickey Fuller Test
22Cointegration
- In general non-stationary variables should not be
used in regression. - In general a linear combination of I(1) series,
eg is I(1). - If et is I(0) xt and yt are cointegrated and the
regression is not spurious - et can be interpreted as the error in a long-run
equilibrium.
23Example of a cointegration test
Model 1 5 10
?3.90 ?3.34 ?3.04