Multivariate Linear Regression on Classiier Outputs: a Capacity Study
نویسندگان
چکیده
We consider the problem of combining the outputs of several classiiers trained independently to perform a discrimination task, in order to improve the prediction accuracy of individual classiiers. We brieey describe the multivariate linear regression model which has already been implemented successfully for that purpose and we study its capacity, using generalizations of the notion of VC dimension.
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