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A semi-supervised self-training method based on density peaks and natural neighbors

机译:基于密度峰和自然邻居的半监督自我训练方法

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摘要

The semi-supervised self-training method is one of the successful methodologies of semi-supervised classification and can train a classifier by exploiting both labeled data and unlabeled data. However, most of the self-training methods are limited by the distribution of initial labeled data, heavily rely on parameters and have the poor ability of prediction in the self-training process. To solve these problems, a novel self-training method based on density peaks and natural neighbors (STDPNaN) is proposed. In STDPNaN, an improved parameter-free density peaks clustering (DPCNaN) is firstly presented by introducing natural neighbors. The DPCNaN can reveal the real structure and distribution of data without any parameter, and then helps STDPNaN restore the real data space with the spherical or non-spherical distribution. Also, an ensemble classifier is employed to improve the predictive ability of STDPNaN in the self-training process. Intensive experiments show that (a) STDPNaN outperforms state-of-the-art methods in improving classification accuracy ofknearest neighbor, support vector machine and classification and regression tree; (b) STDPNaN also outperforms comparison methods without any restriction on the number of labeled data; (c) the running time of STDPNaN is acceptable.
机译:半监督的自我训练方法是半监督分类的成功方法之一,可以通过利用标记的数据和未标记的数据来培训分类器。然而,大多数自我训练方法受到初始标记数据的分布,严重依赖参数的限制,并且在自我训练过程中具有较差的预测能力。为了解决这些问题,提出了一种基于密度峰和自然邻居(STDPNAN)的新型自我训练方法。在STDPNAN中,首先通过引入自然邻居,首先提出改进的无参数密度峰聚类(DPCNAN)。 DPCNAN可以揭示无任何参数的实际结构和数据分布,然后通过球形或非球形分布帮助STDPNAN恢复实际数据空间。此外,使用集合分类器来提高STDPNAN在自培训过程中的预测能力。密集实验表明,(a)STDPNAN优于最先进的方法,提高了人称最邻居的分类精度,支持向量机和分类和回归树; (b)STDPNAN还优于比较方法而没有对标记数据数量的任何限制; (c)STDPNAN的运行时间是可接受的。

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