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Semi-supervised multi-sensor classification via consensus-based Multi-View Maximum Entropy Discrimination

机译:通过基于共识的多视图最大熵区分进行半监督多传感器分类

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In this paper, we consider multi-sensor classification when there is a large number of unlabeled samples. The problem is formulated under the multi-view learning framework and a Consensus-based Multi-View Maximum Entropy Discrimination (CMV-MED) algorithm is proposed. By iteratively maximizing the stochastic agreement between multiple classifiers on the unlabeled dataset, the algorithm simultaneously learns multiple high accuracy classifiers. We demonstrate that our proposed method can yield improved performance over previous multi-view learning approaches by comparing performance on three real multi-sensor data sets.
机译:在本文中,当存在大量未标记样品时,我们考虑采用多传感器分类。该问题是在多视图学习框架下提出的,并提出了一种基于共识的多视图最大熵判别算法。通过迭代最大化未标记数据集上多个分类器之间的随机一致性,该算法可同时学习多个高精度分类器。我们通过比较三个真实的多传感器数据集上的性能,证明了我们提出的方法可以比以前的多视图学习方法产生更高的性能。

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