发明名称 System and method for fusing data from different information sources
摘要 A boosting-based method and system for fusing a set of classifiers that performs classification using weak learners trained on different views of the training data. The final ensemble contains learners that are trained on examples sampled with a shared sampling distribution. The combination weights for the final weighting rule are obtained at each iteration based on the lowest training error among the views. Weights are updated in each iteration based on the lowest training error among all views at that iteration to form the shared sampling distribution used at the next iteration. In each iteration, a weak learner is selected from the pool of weak learners trained on disjoint views based on the lowest training error among all views, resulting in a lower training and generalization error bound of the final hypothesis.
申请公布号 US2008027887(A1) 申请公布日期 2008.01.31
申请号 US20060534697 申请日期 2006.09.25
申请人 THE GOVERNMENT OF THE US, AS REPRESENTED BY THE SECRETARY OF THE NAVY 发明人 BARBU COSTIN;LOHRENZ MAURA C.
分类号 G06N3/08 主分类号 G06N3/08
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