TY - JOUR
T1 - AmericasNLI
T2 - Machine translation and natural language inference systems for Indigenous languages of the Americas
AU - Kann, Katharina
AU - Ebrahimi, Abteen
AU - Mager, Manuel
AU - Oncevay, Arturo
AU - Ortega, John E.
AU - Rios, Annette
AU - Fan, Angela
AU - Gutierrez-Vasques, Ximena
AU - Chiruzzo, Luis
AU - Giménez-Lugo, Gustavo A.
AU - Ramos, Ricardo
AU - Meza Ruiz, Ivan Vladimir
AU - Mager, Elisabeth
AU - Chaudhary, Vishrav
AU - Neubig, Graham
AU - Palmer, Alexis
AU - Coto-Solano, Rolando
AU - Vu, Ngoc Thang
N1 - Publisher Copyright:
Copyright © 2022 Kann, Ebrahimi, Mager, Oncevay, Ortega, Rios, Fan, Gutierrez-Vasques, Chiruzzo, Giménez-Lugo, Ramos, Meza Ruiz, Mager, Chaudhary, Neubig, Palmer, Coto-Solano and Vu.
PY - 2022/12/2
Y1 - 2022/12/2
N2 - Little attention has been paid to the development of human language technology for truly low-resource languages—i.e., languages with limited amounts of digitally available text data, such as Indigenous languages. However, it has been shown that pretrained multilingual models are able to perform crosslingual transfer in a zero-shot setting even for low-resource languages which are unseen during pretraining. Yet, prior work evaluating performance on unseen languages has largely been limited to shallow token-level tasks. It remains unclear if zero-shot learning of deeper semantic tasks is possible for unseen languages. To explore this question, we present AmericasNLI, a natural language inference dataset covering 10 Indigenous languages of the Americas. We conduct experiments with pretrained models, exploring zero-shot learning in combination with model adaptation. Furthermore, as AmericasNLI is a multiway parallel dataset, we use it to benchmark the performance of different machine translation models for those languages. Finally, using a standard transformer model, we explore translation-based approaches for natural language inference. We find that the zero-shot performance of pretrained models without adaptation is poor for all languages in AmericasNLI, but model adaptation via continued pretraining results in improvements. All machine translation models are rather weak, but, surprisingly, translation-based approaches to natural language inference outperform all other models on that task.
AB - Little attention has been paid to the development of human language technology for truly low-resource languages—i.e., languages with limited amounts of digitally available text data, such as Indigenous languages. However, it has been shown that pretrained multilingual models are able to perform crosslingual transfer in a zero-shot setting even for low-resource languages which are unseen during pretraining. Yet, prior work evaluating performance on unseen languages has largely been limited to shallow token-level tasks. It remains unclear if zero-shot learning of deeper semantic tasks is possible for unseen languages. To explore this question, we present AmericasNLI, a natural language inference dataset covering 10 Indigenous languages of the Americas. We conduct experiments with pretrained models, exploring zero-shot learning in combination with model adaptation. Furthermore, as AmericasNLI is a multiway parallel dataset, we use it to benchmark the performance of different machine translation models for those languages. Finally, using a standard transformer model, we explore translation-based approaches for natural language inference. We find that the zero-shot performance of pretrained models without adaptation is poor for all languages in AmericasNLI, but model adaptation via continued pretraining results in improvements. All machine translation models are rather weak, but, surprisingly, translation-based approaches to natural language inference outperform all other models on that task.
KW - low-resource languages
KW - machine translation
KW - model adaptation
KW - multilingual NLP
KW - natural language inference
KW - natural language processing
KW - pretrained models
UR - http://www.scopus.com/inward/record.url?scp=85144103372&partnerID=8YFLogxK
U2 - 10.3389/frai.2022.995667
DO - 10.3389/frai.2022.995667
M3 - Article
AN - SCOPUS:85144103372
SN - 2624-8212
VL - 5
JO - Frontiers in Artificial Intelligence
JF - Frontiers in Artificial Intelligence
M1 - 995667
ER -