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Regression with Time Series Data

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Dickey Fuller Tests. Allow for a number of possible models. Drift. Deterministic trend ... the Dickey-Fuller Test. Critical values. Example of a Dickey Fuller ... – PowerPoint PPT presentation

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Title: Regression with Time Series Data


1
Regression with Time Series Data
  • Judge et al Chapter 15 and 16

2
Distributed Lag
3
Polynomial distributed lag
4
Estimating a polynomial distributed lag
5
Geometric Lag
Impact Multiplier change in yt when xt changes
by one unit
If change in xt is sustained for another period
Long-run multiplier
6
The Koyck Transformation
7
Autoregressive 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.
8
Stationarity
  • 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

9
Stationary Processes
10
Non-stationary processes
11
Non-stationary processes with drift
12
Summary of time series processes
  • AR(1)
  • Random walk
  • Random walk with drift
  • Deterministic trend

13
Trends
  • 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.

14
Real data
15
Spurious correlation
16
Spurious 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
17
Checking/testing for stationarity
  • Correlogram
  • Shows partial correlation observations at
    increasing intervals.
  • If stationary these die away.
  • Box-Pierce
  • Ljung-Box
  • Unit root tests

18
Unit root test
19
Dickey 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)
20
Critical 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
21
Example of a Dickey Fuller Test
22
Cointegration
  • 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.

23
Example of a cointegration test
Model 1 5 10
?3.90 ?3.34 ?3.04
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