Notes
Objective function for voting model selection
<2016-06-14 Tue 11:43>
- The objective function is to minimise the average cv error
- This is because we want to minimise MSE (or some other statistic) on an unseen dataset
- However, mean-CV error is just an estimate of MSE due to the resampling used
- So, do we believe that argmin mean-CV is the best way to choose λ
- (or some other model feature)
- How about if we want the λ that is most popular
- That is, the one which would be optimal most of the time
- Do they converge to each other in the limit?
- Like saying we want the λ that results in the most lowest-MSEs in new, unseen data, not just averages them