I am trying to find a way to optimize the number of states in hidden markov model (HMM) in R. There are a number of R packages on HMM in R but I am having trouble estimating the optimal number of hidden states. Thank you for your help.
To tune the number of hidden states you need a vector of possible number of hidden states
Here is a pseudo code example of how to do it.
I guess the performance measure in your case would be how good the model is at predicting the outcome of new unseen examples. I suggest you do cross validation for each number of hidden states. Something on these lines:
The reason I didn't provide more detailed code is to not clutter the example (and since you did not provide a reproducible example to work from).