I am working on a research and I would like to come up with a method that refuses to classify some constant portion of test data (e.g. 20%, one in five classifications can be answered as "i am not sure" by the algorithm). The idea is to have an algorithm that can effectively choose which classifications are the most probable to be false and refuse to answer them (in order to improve overal accuracy).
I wonder if there is any general machine learning method (indepenedent of classifier used) to achieve this?
Any answer will help, thanks.