Sociodemographic factors (e.g., gender or age) shape our language. Previous work showed that incorporating specific sociodemographic factors can consistently improve performance for various NLP tasks in traditional NLP models. We investigate whether these previous findings still hold with state-of-the-art pretrained Transformers. We use three common specialization methods proven effective for incorporating external knowledge into pretrained Transformers (e.g., domain-specific or geographic knowledge). We adapt the language representations for the sociodemographic dimensions of gender and age, using continuous language modeling and dynamic multi-task learning for adaptation, where we couple language modeling with the prediction of a sociodem...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Deep learning has the potential to help solve numerous problems in cognitive science andeducation, b...
Natural language processing (NLP) technology has been applied in various domains, ranging from socia...
Pre-trained language models (PLMs) have outperformed other NLP models on a wide range of tasks. Opti...
Classic natural language processing resources such as the Penn Treebank (Marcus et al. 1993) have lo...
Extra-linguistic factors influence language use, and are accounted for by speakers and listeners. Mo...
First published: 05 February 2022In Basque–Spanish bilinguals, statistical learning (SL) in the visu...
In Basque–Spanish bilinguals, statistical learning (SL) in the visual modality was more efficient on...
Language usage varies across different demographic factors, such as gender, age, and geographic loca...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Data selection is an effective approach to domain adaptation in statistical ma-chine translation. Th...
Speakers constantly learn language from the environment by sampling their linguistic input and adjus...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Large pretrained multilingual models, trained on dozens of languages, have delivered promising resul...
In evolutionary linguistics (not to be confused with biolinguistics) (Steels 2011), languages are co...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Deep learning has the potential to help solve numerous problems in cognitive science andeducation, b...
Natural language processing (NLP) technology has been applied in various domains, ranging from socia...
Pre-trained language models (PLMs) have outperformed other NLP models on a wide range of tasks. Opti...
Classic natural language processing resources such as the Penn Treebank (Marcus et al. 1993) have lo...
Extra-linguistic factors influence language use, and are accounted for by speakers and listeners. Mo...
First published: 05 February 2022In Basque–Spanish bilinguals, statistical learning (SL) in the visu...
In Basque–Spanish bilinguals, statistical learning (SL) in the visual modality was more efficient on...
Language usage varies across different demographic factors, such as gender, age, and geographic loca...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Data selection is an effective approach to domain adaptation in statistical ma-chine translation. Th...
Speakers constantly learn language from the environment by sampling their linguistic input and adjus...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Large pretrained multilingual models, trained on dozens of languages, have delivered promising resul...
In evolutionary linguistics (not to be confused with biolinguistics) (Steels 2011), languages are co...
In this article we evaluate claims that language structure adapts to sociolinguistic environment. We...
Deep learning has the potential to help solve numerous problems in cognitive science andeducation, b...
Natural language processing (NLP) technology has been applied in various domains, ranging from socia...