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首页> 外文期刊>Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on >Initialization Independent Clustering With Actively Self-Training Method
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Initialization Independent Clustering With Actively Self-Training Method

机译:主动自训练方法的初始化独立聚类

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摘要

The results of traditional clustering methods are usually unreliable as there is not any guidance from the data labels, while the class labels can be predicted more reliable by the semisupervised learning if the labels of partial data are given. In this paper, we propose an actively self-training clustering method, in which the samples are actively selected as training set to minimize an estimated Bayes error, and then explore semisupervised learning to perform clustering. Traditional graph-based semisupervised learning methods are not convenient to estimate the Bayes error; we develop a specific regularization framework on graph to perform semisupervised learning, in which the Bayes error can be effectively estimated. In addition, the proposed clustering algorithm can be readily applied in a semisupervised setting with partial class labels. Experimental results on toy data and real-world data sets demonstrate the effectiveness of the proposed clustering method on the unsupervised and the semisupervised setting. It is worthy noting that the proposed clustering method is free of initialization, while traditional clustering methods are usually dependent on initialization.
机译:传统的聚类方法的结果通常是不可靠的,因为数据标签没有任何指导,而如果给出了部分数据的标签,则可以通过半监督学习预测类标签的可靠性。在本文中,我们提出了一种主动自训练的聚类方法,其中主动选择样本作为训练集以最小化估计的贝叶斯误差,然后探索半监督学习以进行聚类。传统的基于图的半监督学习方法无法方便地估计贝叶斯误差。我们在图上开发了一个特定的正则化框架来执行半监督学习,其中可以有效地估计贝叶斯误差。另外,所提出的聚类算法可以很容易地应用于带有部分类标签的半监督环境中。在玩具数据和真实数据集上的实验结果证明了所提出的聚类方法在无监督和半监督环境下的有效性。值得注意的是,提出的聚类方法没有初始化,而传统的聚类方法通常依赖于初始化。

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