Winning the KDD Cup Orange Challenge with ensemble selection

作者: Claudia Perlich , Vikas Sindhwani , Alexandru Niculescu-Mizil , Prem Melville , Grzegorz Swirszcz

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摘要: … a classifier library is generated, Ensemble Selection builds an ensemble by selecting from the library … So, for appetency, we decided to use the ensemble model generated right after the …

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