# Weak Classifier

I am trying to implement an application that uses AdaBoost algorithm. I know that AdaBoost uses set of weak classifiers, but I don't know what these weak classifiers are. Can you explain it to me with an example and tell me if I have to create my own weak classifiers or I'm suppoused to use some kind of algorithm?

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When I used AdaBoost, my weak classifiers were basically thresholds for each data attribute. Those thresholds need to have a performance of more than the 50%, if not it would be totally random.

Here is a good presentation about Adaboost and how to calculate those week classifiers: http://www.cse.cuhk.edu.hk/~lyu/seminar/07spring/Hongbo.ppt

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@AjMeen Since a decision stump is by definition only single-level, you can't use two decision stumps one-after-the-other. The best way to solve your problem IMO would be to create a 2d decision stump based on these two distinct features. This way you'll be taking both features into account in the (single) decision stump: Lets say `x=size`, `y=weight`, then your stump would be (for example) a threshold of its 2d-euclidean length: `if sqrt(x^2 + y^2) > 6 then return +1 else return -1`. I chose the condition `> 6` randomly, just to show the point. –  Ory Band May 29 at 18:09