Consider a Machine Learning Algorithm which train from a training set, with the help of PAC learning model we get bounds on training sample size needed so the probability that error is limited(by epsilon) is bounded(by delta).
What does PAC learning model say about computational(time) complexity. Suppose a Learning Algorithm is given more time(like more iterations) how the error and probability that error is limited changes
As an learning algorithm which takes one hour to train is of no practical use in financial prediction problems. I need how the performance changes as time given to algorithm changes both in terms of error bounds and what is the probability that error is bounded