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Multiview Learning of Weighted Majority Vote by Bregman Divergence Minimization

机译:Bregman发散最小化加权多数投票的多视图学习

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We tackle the issue of classifier combinations when observations have multiple views. Our method jointly learns view-specific weighted majority vote classifiers (i.e. for each view) over a set of base voters, and a second weighted majority vote classifier over the set of these view-specific weighted majority vote classifiers. We show that the empirical risk minimization of the final majority vote given a multiview training set can be cast as the minimization of Bregman divergences. This allows us to derive a parallel-update optimization algorithm for learning our multiview model. We empirically study our algorithm with a particular focus on the impact of the training set size on the multiview learning results. The experiments show that our approach is able to overcome the lack of labeled information.
机译:当观察有多个视图时,我们解决了分类器组合的问题。我们的方法共同了解了一组基本选民区的特定于特定的加权多数投票分类器(即,每个视图),以及通过这些视图特定加权多数票据分类器的集合上的第二加权多数投票分类器。我们表明,鉴于Multiview培训集的最终大多数投票的经验风险最小化可以作为Bregman分歧的最小化。这使我们能够推导出用于学习多视图模型的并行更新优化算法。我们经验研究我们的算法,特别注重训练集大小对多视图学习结果的影响。实验表明,我们的方法能够克服缺乏标记的信息。

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