A Multi-class Linear Learning Algorithm Related to Winnow
–Neural Information Processing Systems
Committee is an algorithm forcombining the predictions of a set of sub-experts in the online mistake-bounded model oflearning. A sub-expert is a special type of attribute that predicts with a distribution over a finite number of classes. Committee learns a linear function of sub-experts and uses this function to make class predictions. We provide bounds for Committee that show it performs well when the target can be represented by a few relevant sub-experts. We also show how Committee can be used to solve more traditional problems composed of attributes. This leads to a natural extension thatlearns on multi-class problems that contain both traditional attributes and sub-experts.
Neural Information Processing Systems
Dec-31-2000
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