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Semi-Supervised Learning from a Translation Model Between Data Distributions

机译:从数据分布之间的转换模型进行半监督学习

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In this paper, we introduce a probabilistic classification model to address the task of semi-supervised learning. The major novelty of our proposal stems from measuring distributional relationships between the labeled and unlabeled data. This is achieved from a stochastic translation model between data distributions that is estimated from a mixture model. The proposed classifier is defined from the combination of both the translation model and a kernel logistic regression on labeled data. Experimental results obtained over synthetic and real-world data sets validate the usefulness of our proposal.
机译:在本文中,我们介绍了一种概率分类模型来解决半监督学习的任务。我们建议的主要新颖之处在于测量标记和未标记数据之间的分布关系。这是通过从混合模型估计的数据分布之间的随机转换模型来实现的。拟议的分类器是通过翻译模型和对标记数据的核逻辑回归的组合来定义的。通过综合和真实数据集获得的实验结果验证了我们建议的有效性。

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