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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Semi-supervised metric learning via topology preserving multiple semi-supervised assumptions
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Semi-supervised metric learning via topology preserving multiple semi-supervised assumptions

机译:通过拓扑保留半监督假设的半监督度量学习

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摘要

Learning an appropriate distance metric is a critical problem in pattern recognition. This paper addresses the problem of semi-supervised metric learning. We propose a new regularized semi-supervised metric learning (RSSML) method using local topology and triplet constraints. Our regularizer is designed and developed based on local topology, which is represented by local neighbors from the local smoothness, cluster (low density) and manifold information point of view. The regularizer is then combined with the large margin hinge loss on the triplet constraints. In other words, we keep a large margin between different labeled samples, and in the meanwhile, we use the unlabeled samples to regularize it. Then the semi-supervised metric learning method is developed. We have performed experiments on classification using publicly available databases to evaluate the proposed method. To our best knowledge, this is the only method satisfying all the three semi-supervised assumptions, namely smoothness, cluster (low density) and manifold. Experimental results have shown that the proposed method outperforms state-of-the-art semi-supervised distance metric learning algorithms.
机译:学习适当的距离度量是模式识别中的关键问题。本文解决了半监督度量学习的问题。我们提出了一种使用局部拓扑和三元组约束的新的正则化半监督度量学习(RSSML)方法。我们的正则器是基于局部拓扑结构设计和开发的,它是从局部平滑度,聚类(低密度)和多方面信息的角度以局部邻居表示的。然后将正则器与三元组约束上的较大余量铰链损失结合在一起。换句话说,我们在不同标记的样本之间保持较大的余量,同时,我们使用未标记的样本对其进行正则化。然后发展了半监督度量学习方法。我们已经使用公开可用的数据库进行了分类实验,以评估该方法。据我们所知,这是满足所有三个半监督假设(即平滑度,聚类(低密度)和流形)的唯一方法。实验结果表明,所提出的方法优于最新的半监督距离度量学习算法。

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