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ICML
2003
IEEE

Using Linear-threshold Algorithms to Combine Multi-class Sub-experts

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Using Linear-threshold Algorithms to Combine Multi-class Sub-experts
We present a new type of multi-class learning algorithm called a linear-max algorithm. Linearmax algorithms learn with a special type of attribute called a sub-expert. A sub-expert is a vector attribute that has a value for each output class. The goal of the multi-class algorithm is to learn a linear function combining the sub-experts and to use this linear function to make correct class predictions. The main contribution of this work is to prove that, in the on-line mistake-bounded model of learning, a multi-class sub-expert learning algorithm has the same mistake bounds as a related two class linear-threshold algorithm. We apply these techniques to three linear-threshold algorithms: Perceptron, Winnow, and Romma. We show these algorithms give good performance on artificial and real datasets.
Chris Mesterharm
Added 17 Nov 2009
Updated 17 Nov 2009
Type Conference
Year 2003
Where ICML
Authors Chris Mesterharm
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