# forecast differenced series in R

I'm new on R, I've always use e-views and now I have to do a regression

I have Xt stationary and Yt not stationary so I need to difference

`yt=Yt-Y(t-1)`

then the regression is

`yt = a + bXt`

how can I do the forecast on R and obtain the "real" value and not the differences?

in e-views is enouth to write `d(Yt)` but in R is impossible

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possible duplicate of Adding lagged variables to an lm model? – Andrie Oct 5 '13 at 16:51
my dependent variable (`yt`) is not lagged, it is differenced – enk Oct 5 '13 at 17:07
You can use the function `diff()` to calculate the differences. – Andrie Oct 5 '13 at 17:12
sure but when I do the forecast, the function give me the differenced forecast value – enk Oct 5 '13 at 17:14

I think what you are looking for is `cumsum`, which is the inverse operation of `diff` (almost). You can recover a vector from its differences like this:

``````> z<-sample(20)
> dz<-diff(z)
> z0<-cumsum(c(z[1],dz))
> all(z==z0)
[1] TRUE
``````

In your case, it would look something like this:

``````dY<-diff(Y)
dYhat<-lm(dY ~ X[-1])\$fitted
Yhat<-cumsum(c(Y[1],dYhat))
``````
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First, if you think X affects y, then you should difference both variables. Differencing only one of them leads to a model where X affects the change in y rather than y itself.

You could do this with the `arima()` function (and differencing both variables):

``````fit <- arima(y, xreg=X, order=c(0,1,0))
``````

Then predictions on the undifferenced scale are obtained using

``````fcast <- predict(fit, n.ahead=10, newxreg=futureX)
``````

where `futureX` contains the next 10 values of X.

If you really wanted to model the affect of X on d(y), then create a new variable

``````sumX <- cumsum(X)
``````

and use that instead of `X` in the fit (and similarly modify `futureX`).

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