I'm writing a machine-learning solution for a problem that may have more than one possible classifier, depending on the data. so I've collected several classifiers, each of them performs better than the others on some conditions. I'm looking into the meta-classification strategies, and I see there are several algorithms. can anyone please point at fundamental difference between them?
Voting algorithms are simple strategies, where you aglomerate results of classifiers' decisions by for example taking the class which appears in most cases. Stacking/grading strategies are generalizations of this concept. Instead of simply saying "ok, I have a scheme
In short terms, basic voting/stacking/grading methods can be outlined as: