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On semi-supervised learning of Dirichlet Mixture Models for Web content classification

机译:Web内容分类的Dirichlet混合模型的半监督学习

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This paper presents a method for designing semi-supervised classifier trained on labeled and unlabeled instances. We explore the trade-off between maximizing a discriminative likelihood of labeled data and a generative likelihood of labeled and unlabeled data. Moreover, mixture models are an interesting and flexible model family. The different uses of mixture models include for example generative models and density estimation. This paper investigates semi-supervised learning of mixture models using a unified objective function taking both labeled and unlabeled data into account. We conducted experiments on the WebKB and 20NEWSGROUPS. The results show that unlabeled data results in improvement in classification accuracy over the supervised model.
机译:本文提出了一种设计用于在有标签和无标签实例上训练的半监督分类器的方法。我们探索最大化标记数据的判别可能性与标记和未标记数据的产生可能性之间的权衡。此外,混合模型是一个有趣且灵活的模型家族。混合模型的不同用途包括例如生成模型和密度估计。本文研究了使用统一目标函数的混合模型的半监督学习,同时考虑了标记和未标记的数据。我们在WebKB和20NEWSGROUPS上进行了实验。结果表明,与监督模型相比,未标记数据可提高分类精度。

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