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I have question about how AdaBoost combines weak classifiers for each iteration, into a strong classifier. I use C4.5 algorithm as weak classifier algorithm. And for each iteration it produced different decision tree and alpha. How can I combine those models into one strong classifier. In the algorithm has been told that to combine them, adaboost uses formula alpha*hyphotesis. how can I combine them with that formula?

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1 Answer 1

It's easy. alpha can be calculated in different way. Viola in his paper said:

alpha= log(1/beta).
beta= wr/(1-wr).
wr is weighted error.
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what is beta variable? –  mrgloom May 27 at 16:47
beta is a middle variable which is used in calculation of alpha. –  Mbt925 May 27 at 19:56

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