I have some data and am trying to teach myself about utilize lagged predictors within regression models. I'm currently trying to generate predictions from a generalized additive model that uses splines to smooth the data and contains lags.

Let's say I have the following data and have split the data into training and test samples.

```
head(mtcars)
Train <- sample(1:nrow(mtcars), ceiling(nrow(mtcars)*3/4), replace=FALSE)
```

Great, let's train the gam model on the training set.

```
f_gam <- gam(hp ~ s(qsec, bs="cr") + s(lag(disp, 1), bs="cr"), data=mtcars[Train,])
summary(f_gam)
```

When I go to predict on the holdout sample, I get an error message.

```
f_gam.pred <- predict(f_gam, mtcars[-Train,]); f_gam.pred
Error in ExtractData(object, data, NULL) :
'names' attribute [1] must be the same length as the vector [0]
Calls: predict ... predict.gam -> PredictMat -> Predict.matrix3 -> ExtractData
```

Can anyone help diagnose the issue and help with a solution. I get that `lag(__,1)`

leaves a data point as NA and that is likely the reason for the lengths being different. However, I don't have a solution to the problem.