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Semi-Supervised Regression with Co-Training

机译:联合训练的半监督回归

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摘要

In many practical machine learning and data mining applications, unlabeled training examples are readily available but labeled ones are fairly expensive to obtain. Therefore, semi-supervised learning algorithms such as co-training have attracted much attention. Previous research mainly focuses on semi-supervised classification. In this paper, a co-training style semi-supervised regression algorithm, I.e. Coreg, is proposed. This algorithm uses two k-nearest neighbor regressors with different distance metrics, each of which labels the unlabeled data for the other regressor where the labeling confidence is estimated through consulting the influence of the labeling of unlabeled examples on the labeled ones. Experiments show that COREG can effectively exploit unlabeled data to improve regression estimates.
机译:在许多实际的机器学习和数据挖掘应用中,可以随时使用未标记的训练示例,但获得标记的示例相当昂贵。因此,诸如协同训练之类的半监督学习算法引起了广泛的关注。先前的研究主要集中在半监督分类上。本文提出了一种协同训练风格的半监督回归算法,即建议。该算法使用两个具有不同距离度量的k最近邻回归器,每个回归器为另一个回归器标记未标记的数据,在该回归器中,通过咨询未标记示例的标记对被标记示例的影响来估计标记置信度。实验表明,COREG可以有效地利用未标记的数据来改善回归估计。

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