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A Novel Multi label Text Classification Model using Semi supervised learning

机译:基于半监督学习的新型多标签文本分类模型

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Automatic text categorization (ATC) is a prominent research area within Information retrieval. Through this paper a classification model for ATC in multi-label domain is discussed. We are proposing a new multi label text classification model for assigning more relevant set of categories to every input text document. Our model is greatly influenced by graph based framework and Semi supervised learning. We demonstrate the effectiveness of our model using Enron , Slashdot , Bibtex and RCV1 datasets. Our experimental results indicate that the use of Semi Supervised Learning in MLTC greatly improves the decision making capability of classifier.
机译:自动文本分类(ATC)是信息检索中一个重要的研究领域。通过本文,讨论了多标签领域中ATC的分类模型。我们正在提议一种新的多标签文本分类模型,用于为每个输入文本文档分配更多相关的类别集。我们的模型受到基于图的框架和半监督学习的极大影响。我们使用Enron,Slashdot,Bibtex和RCV1数据集演示了模型的有效性。我们的实验结果表明,在MLTC中使用半监督学习大大提高了分类器的决策能力。

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