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Semi-supervised nonlinear dimensionality reduction with pairwise constraints

机译:具有成对约束的半监督非线性降维

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The problem of semi-supervised dimensionality reduction with kernels called KS2DR is considered for semi-supervised learning. In this setting, domain knowledge in the form of pair constraints is adopted to specify whether pairs of instances belong to the same class or not. KS2DR can project the samples data onto a set of ‘useful’ features and preserve the structure of unlabeled samples data as well as both similar and dissimilar constraints defined in the feature space, under which the samples with different class labels are easier to be effectively partitioned from each other. We demonstrate the practical usefulness and high scalability of KS2DR algorithms in data visualization and classification tasks through extensive simulation studies. Experimental results show the proposed methods can almost always achieve the highest accuracy when the dimension is reduced. And KS2DR methods outperform some established dimensionality reduction methods no matter how many numbers of constraints, dimensions are used.
机译:对于半监督学习,考虑了使用名为KS 2 DR的内核的半监督降维问题。在这种情况下,采用对约束形式的领域知识来指定实例对是否属于同一类。 KS 2 DR可以将样本数据投影到一组“有用”特征上,并保留未标记样本数据的结构以及在特征空间中定义的相似约束和不相似约束,在这些约束下,样本具有不同的类标签更容易彼此有效地分区。通过广泛的仿真研究,我们证明了KS 2 DR算法在数据可视化和分类任务中的实用性和高可扩展性。实验结果表明,所提出的方法在减小尺寸时几乎总是可以达到最高的精度。无论使用多少个约束和尺寸,KS 2 DR方法的性能都优于某些既定的降维方法。

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