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Eviews5 / EViews5 / Example Files / x12 / example14

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July 1998

Example 14. The Brazilian Gross National Product series has 33 quarterly
observations. This is quite short for time series modeling.
Consequently, adding or changing regressors often has a
signficant impact on other coefficent estimates and on the
seasonal factors. Estimated coefficients often appear to be
statistically significant.

Try replacing the one-coefficient weekday-weekend day trading
day model td1nolpyear with tdnolpyear and look at the impact.
Try other regressors, for example, Easter effect regressors.
Do you think that Easter effects or day of week effects can
be estimated reliably from 33 observations? Do some experiments
to test this.

To add a specified regression effect to a series, you can
specify the b vector in the regression spec with coefficients
fixed at -1 times the values you want to impose. When X-12-ARIMA
subtracts the fixed regression effect from the original series,
it will add the effect you want.


# Example 14: brazgnp.spc

# RegARIMA estimation of calendar effects in a short series.

series{
name="BRAZGNP"
start=1990.1
period=4
data=(97.49 96.11 106.17 100.23
91.53 103.51 107.44 101.64
95.47 101.72 103.71 101.02
98.73 107.06 109.16 106.77
103.40 110.38 115.79 116.85
114.18 117.46 116.99 116.64
112.57 120.10 123.26 122.17
116.84 124.82 126.79 124.81
118.13)
title="Brazilian GNP"
decimals=2
}
regression{
variables=(
ao1990.2
# tdnolpyear
td1nolpyear
)
# aictest=(
# easter
# tdnolpyear
# )
}
arima{model=(0 1 1)(0 1 1)}
estimate{ }
check{}
#outlier{types=all}
forecast {maxlead=4 print=none}
x11{mode=add}

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