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Boosting information fusion

机译:提高信息融合

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Ensemble methods provide a principled framework for building high performance classifiers and representing many types of data. As a result, these methods can be useful for making inferences in many domains such as classification and multi-modal biometrics. We introduce a novel ensemble method for combining multiple representations (or views). The method is a multiple view generalization of AdaBoost. Similar to AdaBoost, base classifiers are independently built from each representation. Unlike AdaBoost, however, all data types share the same sampling distribution as the view whose weighted training error is the smallest among all the views. As a result, the most consistent data type dominates over time, thereby significantly reducing sensitivity to noise. In addition, our proposal is provably better than AdaBoost trained on any single type of data. The proposed method is applied to the problems of facial and gender prediction based on biometric traits as well as of protein classification. Experimental results show that our method outperforms several competing techniques including kernel-based data fusion.
机译:合奏方法为构建高性能分类器和代表许多类型的数据提供了一个原则性的框架。结果,这些方法可用于在许多域中进行推断,例如分类和多模态生物识别技术。我们介绍了一种组合多个表示(或视图)的新型集合方法。该方法是Adaboost的多视图泛化。与AdaBoost类似,基本分类器由每个表示独立构建。然而,与Adaboost不同,所有数据类型都与所有视图中最小的视图共享相同的采样分发。结果,最一致的数据类型随着时间的推移主导,从而显着降低对噪声的敏感性。此外,我们的提案比任何单一类型的数据训练都会优于adaboost。基于生物识别性状以及蛋白质分类,将所提出的方法应用于面部和性别预测问题。实验结果表明,我们的方法优于基于内核的数据融合的几种竞争技术。

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