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Semi-Supervised Learning on Single-View Datasets by Integration of Multiple Co-trained Classifiers

机译:通过集成多个协同训练的分类器对单视图数据集进行半监督学习

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We propose a novel semi-supervised learning algorithm, called IMCC, designed for co-training classifiers on single-view datasets. Our method runs the co-training algorithm for a predefined number of times, each time using a different random split of features. Thus, a set of diverse co-training classifiers is created. Each of these classifiers then labels each of the examples for which we want to determine the class label. In this way, each example for classification is assigned multiple labels. We then treat this as a problem of learning from inconsistent and unreliable annotators in a multi-annotator problem setting and estimate the single hidden true label for each example. In experimental results obtained on 25 benchmark datasets of various properties IMCC outperformed five considered alternative methods for co-training on single-view datasets, and resulted in a statistical tie with a Naive Bayes classifier trained using a much larger set of labeled examples.
机译:我们提出了一种新颖的半监督学习算法,称为IMCC,设计用于在单视图数据集上共同训练分类器。我们的方法将协同训练算法运行预定的次数,每次使用不同的特征随机分割。因此,创建了一组不同的共同训练分类器。这些分类器中的每一个然后标记我们要为其确定类标签的每个示例。这样,为每个分类示例分配了多个标签。然后,我们将其视为在多注释器问题设置中向不一致和不可靠的注释器学习的问题,并为每个示例估计单个隐藏的真实标签。在25个具有各种属性的基准数据集上获得的实验结果中,IMCC优于在单视图数据集上进行联合训练的五种公认替代方法,并与使用大量标注示例进行训练的朴素贝叶斯分类器产生统计联系。

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