I have a dataset of around 3000 positive and 1500 negative samples, with around 1000 features. All features are real number. I want to train a randomForest classifier with "randomForest" R package.
The problem is that I want a classifier with 100% precision (TP / TP+FP) on training dataset. However, I can hardly achieve this by adjusting the $votes in the trained random Forest.
I wonder if anybody have experience or have any idea on such kind of problem? If you have any clue, please give me some hint. Thanks in advance!
I am open to any other machine learning method, if it promise me 100% precision.