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首页> 外文期刊>Journal of the Brazilian Computer Society >Partially labeled data stream classification with the semi-supervised K-associated graph
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Partially labeled data stream classification with the semi-supervised K-associated graph

机译:半监督的K相关图对部分标记的数据流进行分类

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摘要

Regular data classification techniques are based mainly on two strong assumptions: (1) the existence of a reasonably large labeled set of data to be used in training; and (2) future input data instances conform to the distribution of the training set, i.e. data distribution is stationary along time. However, in the case of data stream classification, both of the aforementioned assumptions are difficult to satisfy. In this paper, we present a graph-based semi-supervised approach that extends the static classifier based on the K-associated Optimal Graph to perform online semi-supervised classification tasks. In order to learn from labeled and unlabeled patterns, here we adapt the optimal graph construction to simultaneously spread the labels in the training set. The sparse, disconnected nature of the proposed graph structure gives flexibility to cope with non-stationary classification. Experimental comparison between the proposed method and three state-of-the-art ensemble classification methods is provided and promising results have been obtained.
机译:常规数据分类技术主要基于两个强有力的假设:(1)存在用于训练的相当大的标记数据集; (2)未来的输入数据实例符合训练集的分布,即数据分布沿时间是固定的。但是,在数据流分类的情况下,很难满足上述两个假设。在本文中,我们提出了一种基于图的半监督方法,该方法扩展了基于K关联的最优图的静态分类器,以执行在线半监督分类任务。为了从标记的和未标记的模式中学习,我们在此处调整最佳图形构造以在训练集中同时传播标记。所提出的图结构的稀疏,分离的性质为应对非平稳分类提供了灵活性。提供了所提方法与三种最新的集成分类方法的实验比较,并获得了可喜的结果。

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