Search Results for author: Martin Reynaert

Found 9 papers, 1 papers with code

Expert Concept-Modeling Ground Truth Construction for Word Embeddings Evaluation in Concept-Focused Domains

2 code implementations COLING 2020 Arianna Betti, Martin Reynaert, Thijs Ossenkoppele, Yvette Oortwijn, Andrew Salway, Jelke Bloem

We present a novel, domain expert-controlled, replicable procedure for the construction of concept-modeling ground truths with the aim of evaluating the application of word embeddings.

Embeddings Evaluation Philosophy

Nederlab: Towards a Single Portal and Research Environment for Diachronic Dutch Text Corpora

no code implementations LREC 2016 Hennie Brugman, Martin Reynaert, Nicoline van der Sijs, Ren{\'e} van Stipriaan, Erik Tjong Kim Sang, Antal Van den Bosch

The Nederlab project aims to bring together all digitized texts relevant to the Dutch national heritage, the history of the Dutch language and culture (circa 800 {--} present) in one user friendly and tool enriched open access web interface.

Cultural Vocal Bursts Intensity Prediction

OCR Post-Correction Evaluation of Early Dutch Books Online - Revisited

no code implementations LREC 2016 Martin Reynaert

We present further work on evaluation of the fully automatic post-correction of Early Dutch Books Online, a collection of 10, 333 18th century books.

Optical Character Recognition (OCR)

Synergy of Nederlab and

no code implementations LREC 2014 Martin Reynaert

We then move to evaluating the new TICCL port on a very large corpus of Dutch books known as EDBO, digitized by the Dutch National Library.

Optical Character Recognition (OCR)

Beyond SoNaR: towards the facilitation of large corpus building efforts

no code implementations LREC 2012 Martin Reynaert, Ineke Schuurman, V{\'e}ronique Hoste, Nelleke Oostdijk, Maarten van Gompel

In this paper we report on the experiences gained in the recent construction of the SoNaR corpus, a 500 MW reference corpus of contemporary, written Dutch.

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