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Semi-supervised Classification Based on Clustering Ensembles

机译:基于聚类集成的半监督分类

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摘要

In many real-world applications, there only exist very few labeled samples, while a large number of unlabeled samples are available. Therefore, it is difficult for some traditional semi-supervised algorithms to generate the useful classifiers to evaluate the labeling confidence of unlabeled samples. In this paper, a new semi-supervised classification based on clustering ensembles named SSCCE is proposed. It takes advantages of clustering ensembles to generate multiple partitions for a given dataset, and then uses the clustering consistency index to determine the labeling confidence of unlabeled samples. The algorithm can overcome some defects about the traditional semi-supervised classification algorithms, and enhance the performance of the hypothesis trained on very few labeled samples by exploiting a large number of unlabeled samples. Experiments carried out on ten public data sets from UCI machine learning repository show that this method is effective and feasible.
机译:在许多实际应用中,只有很少的标记样品,而大量的未标记样品可用。因此,一些传统的半监督算法很难生成有用的分类器来评估未标记样本的标记置信度。本文提出了一种新的基于聚类集成的半监督分类方法,即SSCCE。它利用聚类集成为给定的数据集生成多个分区的优势,然后使用聚类一致性指数来确定未标记样本的标记置信度。该算法可以克服传统半监督分类算法的一些缺陷,并通过利用大量未标记样本来增强在很少标记样本上训练的假设的性能。对来自UCI机器学习存储库的十个公共数据集进行的实验表明,该方法是有效且可行的。

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