# R: converting non-stationary to stationary

I have one data it is not stationary. I'm trying to make it stationary. I tried log transformation, BoxCox transformation, lag(1, 2 and 3) differences. No use of these transformations and differencing. I used adf test to test stationarity in R. Can anybody tell is there any other method to make it stationary.

``````data is;
6.668
5.591
4.734
3.493
3.235
3.968
2.64
2.885
3.045
3.579
5.463
5.458
5.758
5.931
5.731
6.799
9.568
9.11
6.571
8.528
15.11
13.956
16.46
19.599
27.281
39.928
56.284
67.565
106.399
104.229
100.686
141.755
164.447
``````

Thanks, Punith

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What happens if you try `diff(log(data))`? `diff(diff(log(data)))`? –  Henry Jun 19 '13 at 22:21
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## 1 Answer

You did not respond to my comment, so to make the point, if you try

``````> require(tseries)
> adf.test(diff(diff(log(data))))
``````

then you get the response

``````        Augmented Dickey-Fuller Test

data:  diff(diff(log(data)))
Dickey-Fuller = -5.1371, Lag order = 3, p-value = 0.01
alternative hypothesis: stationary

Warning message:
In adf.test(diff(diff(log(data)))) : p-value smaller than printed p-value
``````
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Thanks Henry I got stationary.. –  Punith Jun 28 '13 at 8:39
Another question I have, I used ARIMA(2,0,1) for diff(diff(log(data))) data. and predicted next 3 years. Predicted values are; 0.13799588 0.05763208 -0.02169350 How to convert back this values to real values in R? Thank you in advance.. –  Punith Jun 28 '13 at 9:21
To reverse `diff` try `cumsum` or `diffinv`. To reverse `log` try `exp`. –  Henry Jul 2 '13 at 8:26
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