Search Results for author: Kristin Hagen

Found 8 papers, 1 papers with code

Tagging a Norwegian Dialect Corpus

no code implementations WS (NoDaLiDa) 2019 Andre Kåsen, Anders Nøklestad, Kristin Hagen, Joel Priestley

This paper describes an evaluation of five data-driven part-of-speech (PoS) taggers for spoken Norwegian.

POS

The Norwegian Dialect Corpus Treebank

no code implementations LREC 2022 Andre Kåsen, Kristin Hagen, Anders Nøklestad, Joel Priestly, Per Erik Solberg, Dag Trygve Truslew Haug

This paper presents the NDC Treebank of spoken Norwegian dialects in the Bokmål variety of Norwegian.

Comparing Methods for Measuring Dialect Similarity in Norwegian

no code implementations LREC 2020 Janne Johannessen, Andre K{\aa}sen, Kristin Hagen, Anders N{\o}klestad, Joel Priestley

The present article presents four experiments with two different methods for measuring dialect similarity in Norwegian: the Levenshtein method and the neural long short term memory (LSTM) autoencoder network, a machine learning algorithm.

BIG-bench Machine Learning

Constructing a Norwegian Academic Wordlist

no code implementations LREC 2016 Janne M Johannessen, Arash Saidi, Kristin Hagen

We present the development of a Norwegian Academic Wordlist (AKA list) for the Norwegian Bokm{\"a}l variety.

The Norwegian Dependency Treebank

no code implementations LREC 2014 Per Erik Solberg, Arne Skj{\ae}rholt, Lilja {\O}vrelid, Kristin Hagen, Janne Bondi Johannessen

The Norwegian Dependency Treebank is a new syntactic treebank for Norwegian Bokm{\"a}l and Nynorsk with manual syntactic and morphological annotation, developed at the National Library of Norway in collaboration with the University of Oslo.

Dependency Parsing Machine Translation +3

The Nordic Dialect Corpus

no code implementations LREC 2012 Janne Bondi Johannessen, Joel Priestley, Kristin Hagen, Anders N{\o}klestad, Andr{\'e} Lynum

In this paper, we describe the Nordic Dialect Corpus, which has recently been completed.

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