DE eng

Search in the Catalogues and Directories

Page: 1 2
Hits 1 – 20 of 34

1
Understanding the effects of negative (and positive) pointwise mutual information on word vectors
Salle, A.; Villavicencio, A.. - : Taylor & Francis, 2022
BASE
Show details
2
Improving tokenisation by alternative treatment of spaces
BASE
Show details
3
Assessing idiomaticity representations in vector models with a noun compound dataset labeled at type and token levels
Garcia, M.; Kramer Vieira, T.; Scarton, C.. - : Association for Computational Linguistics (ACL), 2021
BASE
Show details
4
Probing for idiomaticity in vector space models
Garcia, M.; Vieira, T.K.; Scarton, C.. - : Association for Computational Linguistics (ACL), 2021
BASE
Show details
5
AStitchInLanguageModels : dataset and methods for the exploration of idiomaticity in pre-trained language models
Tayyar Madabushi, H.; Gow-Smith, E.; Scarton, C.. - : Association for Computational Linguistics, 2021
BASE
Show details
6
CogNLP-Sheffield at CMCL 2021 Shared Task: Blending cognitively inspired features with transformer-based language models for predicting eye tracking patterns
Vickers, P.; Wainwright, R.; Tayyar Madabushi, H.. - : Association for Computational Linguistics (ACL), 2021
BASE
Show details
7
Investigating language impact in bilingual approaches for computational language documentation
Boito, M.Z.; Villavicencio, A.; Besacier, L.. - : Special Interest Group: Under-resourced Languages (SIGUL), 2020
BASE
Show details
8
Unsupervised compositionality prediction of nominal compounds
Cordeiro, S.; Villavicencio, A.; Idiart, M.. - : MIT Press - Journals, 2019
BASE
Show details
9
A dual-attention hierarchical recurrent neural network for dialogue act classification
Li, R.; Lin, C.; Collinson, M.. - : Association for Computational Linguistics (ACL), 2019
BASE
Show details
10
When the whole is greater than the sum of its parts : multiword expressions and idiomaticity
Villavicencio, A.. - : Association for Computational Linguistics, 2019
BASE
Show details
11
Proceedings of the 23rd Conference on Computational Natural Language Learning (CoNLL)
Bansal, M.; Villavicencio, A.. - : Association for Computational Linguistics (ACL), 2019
BASE
Show details
12
Discovering multiword expressions
Villavicencio, A.; Idiart, M.. - : Cambridge University Press (CUP), 2019
BASE
Show details
13
Empirical evaluation of sequence-to-sequence models for word discovery in low-resource settings
Boito, M.Z.; Villavicencio, A.; Besacier, L.. - : International Speech Communication Association (ISCA), 2019
BASE
Show details
14
Unsupervised word segmentation from speech with attention
Godard, P.; Boito, M.Z.; Ondel, L.. - : ISCA, 2018
BASE
Show details
15
Similarity Measures for the Detection of Clinical Conditions with Verbal Fluency Tasks
Paula, F.; Wilkens, R.; Idiart, M.. - : Association for Computational Linguistics, 2018
BASE
Show details
16
A corpus study of verbal multiword expressions in Brazilian Portuguese
Ramisch, C.; Ramisch, R.; Zilio, L.. - : Springer International Publishing, 2018
BASE
Show details
17
Unwritten languages demand attention too! Word discovery with encoder-decoder models
BASE
Show details
18
Restricted recurrent neural tensor networks: Exploiting word frequency and compositionality
Salle, A.; Villavicencio, A.. - : Association for Computational Linguistics, 2018
BASE
Show details
19
UFRGS&LIF at SemEval-2016 task 10: Rule-based MWE identification and predominant-supersense tagging
Cordeiro, S.R.; Ramisch, C.; Villavicencio, A.. - : Association for Computational Linguistics, 2016
Abstract: This paper presents our approach towards the SemEval-2016 Task 10 - Detecting Minimal Semantic Units and their Meanings. Systems are expected to provide a representation of lexical semantics by (1) segmenting tokens into words and multiword units and (2) providing a supersense tag for segments that function as nouns or verbs. Our pipeline rule-based system uses no external resources and was implemented using the mwetoolkit. First, we extract and filter known MWEs from the training corpus. Second, we group input tokens of the test corpus based on this lexicon, with special treatment for non-contiguous expressions. Third, we use an MWE-aware predominant-sense heuristic for supersense tagging. We obtain an F-score of 51.48% for MWE identification and 49.98% for supersense tagging.
URL: http://eprints.whiterose.ac.uk/153561/
BASE
Hide details
20
How naked is the naked truth? A multilingual lexicon of nominal compound compositionality
Villavicencio, A.; Wilkens, R.; Ramisch, C.. - : Association for Computational Linguistics, 2016
BASE
Show details

Page: 1 2

Catalogues
0
0
0
0
0
0
0
Bibliographies
0
0
0
0
0
0
0
0
0
Linked Open Data catalogues
0
Online resources
0
0
0
0
Open access documents
34
0
0
0
0
© 2013 - 2024 Lin|gu|is|tik | Imprint | Privacy Policy | Datenschutzeinstellungen ändern