Christophe Gérard


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2014

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Part of Speech Tagging for New Words (Étiquetage morpho-syntaxique pour des mots nouveaux) [in French]
Ingrid Falk | Delphine Bernhard | Christophe Gérard | Romain Potier-Ferry
Proceedings of TALN 2014 (Volume 2: Short Papers)

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From the Culinary to the Political Meaning of “quenelle” : Using Topic Models For Identifying Novel Senses (De la quenelle culinaire à la quenelle politique : identification de changements sémantiques à l’aide des Topic Models) [in French]
Ingrid Falk | Delphine Bernhard | Christophe Gérard
Proceedings of TALN 2014 (Volume 2: Short Papers)

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From Non Word to New Word: Automatically Identifying Neologisms in French Newspapers
Ingrid Falk | Delphine Bernhard | Christophe Gérard
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)

In this paper we present a statistical machine learning approach to formal neologism detection going some way beyond the use of exclusion lists. We explore the impact of three groups of features: form related, morpho-lexical and thematic features. The latter type of features has not yet been used in this kind of application and represents a way to access the semantic context of new words. The results suggest that form related features are helpful at the overall classification task, while morpho-lexical and thematic features better single out true neologisms.