Evaluating Unsupervised Dutch Word Embeddings as a Linguistic Resource

Word embeddings have recently seen a strong increase in interest as a result of strong performance gains on a variety of tasks. However, most of this research also underlined the importance of benchmark datasets, and the difficulty of constructing these for a variety of language-specific tasks. Still, many of the datasets used in these tasks could prove to be fruitful linguistic resources, allowing for unique observations into language use and variability. In this paper we demonstrate the performance of multiple types of embeddings, created with both count and prediction-based architectures on... Mehr ...

Verfasser: Tulkens, Stéphan
Emmery, Chris
Daelemans, Walter
Dokumenttyp: contributionToPeriodical
Erscheinungsdatum: 2016
Verlag/Hrsg.: Association for Computational Linguistics
Schlagwörter: Word Embeddings / Evaluation / Dutch
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-29445998
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : https://research.tilburguniversity.edu/en/publications/85d85154-462b-439e-b488-b55671d62ed2

Word embeddings have recently seen a strong increase in interest as a result of strong performance gains on a variety of tasks. However, most of this research also underlined the importance of benchmark datasets, and the difficulty of constructing these for a variety of language-specific tasks. Still, many of the datasets used in these tasks could prove to be fruitful linguistic resources, allowing for unique observations into language use and variability. In this paper we demonstrate the performance of multiple types of embeddings, created with both count and prediction-based architectures on a variety of corpora, in two language-specific tasks: relation evaluation, and dialect identification. For the latter, we compare unsupervised methods with a traditional, hand-crafted dictionary. With this research, we provide the embeddings themselves, the relation evaluation task benchmark for use in further research, and demonstrate how the benchmarked embeddings prove a useful unsupervised linguistic resource, effectively used in a downstream task.