Search Results for author: Johan Boye

Found 11 papers, 5 papers with code

Textinator: an Internationalized Tool for Annotation and Human Evaluation in Natural Language Processing and Generation

no code implementations LREC 2022 Dmytro Kalpakchi, Johan Boye

We release an internationalized annotation and human evaluation bundle, called Textinator, along with documentation and video tutorials.

Automatically generating question-answer pairs for assessing basic reading comprehension in Swedish

1 code implementation28 Nov 2022 Dmytro Kalpakchi, Johan Boye

This paper presents an evaluation of the quality of automatically generated reading comprehension questions from Swedish text, using the Quinductor method.

Question Generation Question-Generation +1

Minor changes make a difference: a case study on the consistency of UD-based dependency parsers

1 code implementation UDW (SyntaxFest) 2021 Dmytro Kalpakchi, Johan Boye

Many downstream applications are using dependency trees, and are thus relying on dependency parsers producing correct, or at least consistent, output.

Data Augmentation

BERT-based distractor generation for Swedish reading comprehension questions using a small-scale dataset

1 code implementation INLG (ACL) 2021 Dmytro Kalpakchi, Johan Boye

An important part when constructing multiple-choice questions (MCQs) for reading comprehension assessment are the distractors, the incorrect but preferably plausible answer options.

Distractor Generation Multiple-choice +1

SpaceRefNet: a neural approach to spatial reference resolution in a real city environment

no code implementations WS 2019 Dmytro Kalpakchi, Johan Boye

Adding interactive capabilities to pedestrian wayfinding systems in the form of spoken dialogue will make them more natural to humans.

SpaceRef: A corpus of street-level geographic descriptions

no code implementations LREC 2016 Jana G{\"o}tze, Johan Boye

This article describes SPACEREF, a corpus of street-level geographic descriptions.

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