I'm using the timeslice method in caret's trainControl function to perform cross-validation on a time series model. I've noticed that RMSE increases with the horizon argument.

I realise this might happen for several reasons, e.g., if explanatory variables are being forecast and/or there's autocorrelation in the data such that the model can better predict nearer vs. farther ahead observations. However, I'm seeing the same behaviour even when neither is the case (see trivial reproducible example below).

Can anyone explain why RSMEs are increasing with horizon?

# Make data
X = data.frame(matrix(rnorm(1000 * 3), ncol = 3))
X$y = rowSums(X) + rnorm(nrow(X))

# Iterate over different different forecast horizons and record RMSES
forecast_horizons = c(1, 3, 10, 50, 100)
rmses = numeric(length(forecast_horizons))
for (i in 1:length(forecast_horizons)) {
  ctrl = trainControl(method = 'timeslice', initialWindow = 500, horizon = forecast_horizons[i], fixedWindow = T) 
  rmses[i] = train(y ~ ., data = X, method = 'lm', trControl = ctrl)$results$RMSE
print(rmses) #0.7859786 0.9132649 0.9720110 0.9837384 0.9849005

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.