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Parametric Mixture Models for Multi-Labeled Text

机译:用于多标记文本的参数混合模型

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We propose probabilistic generative models, called parametric mixture models (PMMs), for multiclass, multi-labeled text categorization problem. Conventionally, the binary classification approach has been employed, in which whether or not text belongs to a category is judged by the binary classifier for every category. In contrast, our approach can simultaneously detect multiple categories of text using PMMs. We derive efficient learning and prediction algorithms for PMMs. We also empirically show that our method could significantly outperform the conventional binary methods when applied to multi-labeled text categorization using real World Wide Web pages.
机译:我们提出了概率的生成模型,称为参数化混合模型(PMMS),用于多字母,多标记的文本分类问题。传统上,已经采用了二进制分类方法,其中文本属于一个类别是由每个类别的二进制分类判断。相比之下,我们的方法可以使用PMMS同时检测多个类别的文本。我们推导出PMM的高效学习和预测算法。我们还经过经验表明,当使用真实万维网页应用于多标记的文本分类时,我们的方法可以显着优于传统的二进制方法。

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