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Self-Trained Stacking Model for Semi-Supervised Learning

机译:用于半监督学习的自训练堆叠模型

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摘要

The most important characteristic of semi-supervised learning methods is the combination of available unlabeled data along with an enough smaller set of labeled examples, so as to increase the learning accuracy compared with the default procedure of supervised methods, which on the other hand use only the labeled data during the training phase. In this work, we have implemented a hybrid Self-trained system that combines a Support Vector Machine, a Decision Tree, a Lazy Learner and a Bayesian algorithm using a Stacking variant methodology. We performed an in depth comparison with other well-known Semi-Supervised classification methods on standard benchmark datasets and we finally reached to the point that the presented technique had better accuracy in most cases.
机译:半监督学习方法最重要的特征是将可用的未标记数据与足够小的标记示例集相结合,从而与监督方法的默认程序相比提高学习准确性,另一方面,监督方法在训练阶段仅使用标记数据。在这项工作中,我们实现了一个混合自训练系统,该系统使用堆叠变体方法结合了支持向量机、决策树、惰性学习者和贝叶斯算法。我们在标准基准数据集上与其他著名的半监督分类方法进行了深入比较,最终得出的结论是,所提出的技术在大多数情况下具有更好的准确性。

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