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Local Regularization for Multiclass Classification Facing Significant Intraclass Variations

机译:面向重大类内变异的多类分类的局部正则化

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We propose a new local learning scheme that is based on the principle of decisiveness: the learned classifier is expected to exhibit large variability in the direction of the test example. We show how this principle leads to optimization functions in which the regularization term is modified, rather than the empirical loss term as in most local learning schemes. We combine this local learning method with a Canonical Correlation Analysis based classification method, which is shown to be similar to multiclass LDA. Finally, we show that the classification function can be computed efficiently by reusing the results of previous computations. In a variety of experiments on new and existing data sets, we demonstrate the effectiveness of the CCA based classification method compared to SVM and Nearest Neighbor classifiers, and show that the newly proposed local learning method improves it even further, and outperforms conventional local learning schemes.
机译:我们基于果断原理提出了一种新的本地学习方案:学习的分类器在测试示例的方向上有望表现出较大的可变性。我们展示了此原理如何导致优化函数,其中对正则项进行了修改,而不是像大多数本地学习方案中的经验损失项。我们将这种局部学习方法与基于典范相关分析的分类方法相结合,这被证明与多类LDA相似。最后,我们表明可以通过重用以前的计算结果来有效地计算分类函数。在对新数据集和现有数据集进行的各种实验中,我们证明了与SVM和最近邻分类器相比,基于CCA的分类方法的有效性,并表明新提出的本地学习方法甚至对其进行了进一步改进,并且优于传统的本地学习方案。

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