Part of my code is :

```
#*****************
#linear regression
#*****************
#Linear Models
reg <- lm(X4 ~., data = donnees.train)
print(summary(reg))
#error sum of squares of the model on the test set
reg.pred <- predict(reg,newdata = donnees.test)
reg.rss <- sum((donnees.test$X4-reg.pred)^2)
print(reg.rss)
#pseudo-r-squared
print(1.0-reg.rss/def.rss)
#abline(reg$coefficients)
```

Why i see this error?

```
Error in lm.fit(x, y, offset = offset, singular.ok = singular.ok, ...) :
0 (non-NA) cases
```

My csv file has 12 column X1,X2,....,X12 numeric values for input and one column Y1 for output.

`head(donnees.train)`

. It seems you have a column filled with`NA`

values. – jbaums Feb 22 '14 at 20:53`head(donnees.train)`

. The`lm`

function is expecting`donnees.train`

to include one element named`X4`

, and at least one other element. Here you've just given me your`Y1`

vector. Run`head(donnees.train)`

and then edit your post and paste in the output. – jbaums Feb 22 '14 at 20:58`0 rows`

indicates that`donnees.train`

contains no data. You've made a mistake somewhere with your subsetting and are trying to fit a model without any data. – jbaums Feb 22 '14 at 21:04