Graph-based Techniques for Topic Classification of Tweets in Spanish

Héctor Cordobés, Antonio Fernández, Luis F. Chiroque, Fernando Pérez, Teófilo Redondo, Agustín Santos
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引用次数: 21

Abstract

Topic classification of texts is one of the most interesting challenges in Natural Language Processing (NLP). Topic classifiers commonly use a bag-of-words approach, in which the classifier uses (and is trained with) selected terms from the input texts. In this work we present techniques based on graph similarity to classify short texts by topic. In our classifier we build graphs from the input texts, and then use properties of these graphs to classify them. We have tested the resulting algorithm by classifying Twitter messages in Spanish among a predefined set of topics, achieving more than 70% accuracy.
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基于图的西班牙语推文主题分类技术
文本的主题分类是自然语言处理(NLP)中最有趣的挑战之一。主题分类器通常使用词袋方法,在这种方法中,分类器使用(并训练)从输入文本中选择的术语。在这项工作中,我们提出了基于图相似度的按主题对短文本进行分类的技术。在我们的分类器中,我们从输入文本构建图,然后使用这些图的属性对它们进行分类。我们通过在一组预定义的主题中对西班牙语的Twitter消息进行分类,测试了生成的算法,准确率超过70%。
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