I am trying to forecasts sales of weekly data. The data consists of these variables week no, sales, avgprice/perunit , holiday(whether that week contains holiday or not) and promotion(if any promotion is going) of 104 weeks. So basically the last 6 obs of data set looks as:

```
Week Sales Avg.price.unit Holiday Promotion
101 8,970 50 0 1
102 17,000 50 1 1
103 23,000 80 1 0
104 28,000 180 1 0
105 176 1 0
106 75 0 1
```

Now I want to forecast for 105th and 106th week. So I created univariate time series x by using ts function and then ran auto.arima function by issuing the command:

```
x<-ts(sales$Sales, frequency=7)
> fit<-auto.arima(x,xreg=external, test=c("kpss","adf","pp"),seasonal.test=c("ocsb","ch"),allowdrift=TRUE)
>fit
ARIMA(1,1,1)
**Coefficients:
ar1 ma1 Avg.price.unit Holiday Promotion
-0.1497 -0.9180 0.0363 -10.4181 -4.8971
s.e. 0.1012 0.0338 0.0646 5.1999 5.5148
sigma^2 estimated as 479.3: log likelihood=-465.09
AIC=942.17 AICc=943.05 BIC=957.98**
```

Now when I want to forecast the values for last 2 weeks(105th and 1o6th) I supply the external values of regressors for 105th and 106th week:

```
forecast(fit, xreg=ext)
where ext consists of future values of regressors for last 2 weeks.
The output comes as:
Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
15.85714 44.13430 16.07853 72.19008 1.226693 87.04191
16.00000 45.50166 17.38155 73.62177 2.495667 88.50765
```

The output looks incorrect since the forecasted value of sales is very less as the sales value of previous values(training) values are generallly in range of thousands.

If anyone can tell me why it is coming incorrect/unexpected, that would be great.

`dput(sales)`

. – user974514 Mar 19 '13 at 11:28`ext`

values are much different from the values of`external`

. We can't help unless you provide more information, preferably a replicable example. – Rob Hyndman Mar 21 '13 at 10:26