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DirkSpeelman
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We present the results and the findings of the Second VarDial Evaluation Campaign on Natural Language Processing (NLP) for Similar Languages, Varieties and Dialects. The campaign was organized as part of the fifth edition of the VarDial workshop, collocated with COLING’2018. This year, the campaign included five shared tasks, including two task re-runs – Arabic Dialect Identification (ADI) and German Dialect Identification (GDI) –, and three new tasks – Morphosyntactic Tagging of Tweets (MTT), Discriminating between Dutch and Flemish in Subtitles (DFS), and Indo-Aryan Language Identification (ILI). A total of 24 teams submitted runs across the five shared tasks, and contributed 22 system description papers, which were included in the VarDial workshop proceedings and are referred to in this report.
Vector-based models of lexical semantics retrieve semantically related words automatically from large corpora by exploiting the property that words with a similar meaning tend to occur in similar contexts. Despite their increasing popularity, it is unclear which kind of semantic similarity they actually capture and for which kind of words. In this paper, we use three vector-based models to retrieve semantically related words for a set of Dutch nouns and we analyse whether three linguistic properties of the nouns influence the results. In particular, we compare results from a dependency-based model with those from a 1st and 2nd order bag-of-words model and we examine the effect of the nouns frequency, semantic speficity and semantic class. We find that all three models find more synonyms for high-frequency nouns and those belonging to abstract semantic classses. Semantic specificty does not have a clear influence.
Cet article présente la méthodologie et les résultats d’une analyse sémantique quantitative d’environ 5000 spécificités dans le domaine technique des machines-outils pour l’usinage des métaux. Les spécificités seront identifiées avec la méthode des mots-clés (KeyWords Method). Ensuite, elles seront soumises à une analyse sémantique quantitative, à partir du recouvrement des cooccurrences des cooccurrences, permettant de déterminer le degré de monosémie des spécificités. Finalement, les données quantitatives de spécificité et de monosémie feront l’objet d’analyses de régression. Nous avançons l’hypothèse que les mots (les plus) spécifiques du corpus technique ne sont pas (les plus) monosémiques. Nous présenterons ici les résultats statistiques, ainsi qu’une interprétation linguistique. Le but de cette étude est donc de vérifier si et dans quelle mesure les spécificités du corpus technique sont monosémiques ou polysémiques et quels sont les facteurs déterminants.