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Inicio  /  Informatics  /  Vol: 1 Par: 1 (2014)  /  Artículo
ARTÍCULO
TITULO

Using Collaborative Tagging for Text Classification: From Text Classification to Opinion Mining

Eric Charton    
Marie-Jean Meurs    
Ludovic Jean-Louis and Michel Gagnon    

Resumen

Numerous initiatives have allowed users to share knowledge or opinions using collaborative platforms. In most cases, the users provide a textual description of their knowledge, following very limited or no constraints. Here, we tackle the classification of documents written in such an environment. As a use case, our study is made in the context of text mining evaluation campaign material, related to the classification of cooking recipes tagged by users from a collaborative website. This context makes some of the corpus specificities difficult to model for machine-learning-based systems and keyword or lexical-based systems. In particular, different authors might have different opinions on how to classify a given document. The systems presented hereafter were submitted to the DÉfi Fouille de Textes 2013 evaluation campaign, where they obtained the best overall results, ranking first on task 1 and second on task 2. In this paper, we explain our approach for building relevant and effective systems dealing with such a corpus.

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