Back to Search Start Over

SIGMORPHON 2020 Shared Task 0: Typologically Diverse Morphological Inflection

Authors :
Vylomova, Ekaterina
White, Jennifer
Salesky, Elizabeth
Mielke, Sabrina J.
Wu, Shijie
Ponti, Edoardo
Maudslay, Rowan Hall
Zmigrod, Ran
Valvoda, Josef
Toldova, Svetlana
Tyers, Francis
Klyachko, Elena
Yegorov, Ilya
Krizhanovsky, Natalia
Czarnowska, Paula
Nikkarinen, Irene
Krizhanovsky, Andrew
Pimentel, Tiago
Hennigen, Lucas Torroba
Kirov, Christo
Nicolai, Garrett
Williams, Adina
Anastasopoulos, Antonios
Cruz, Hilaria
Chodroff, Eleanor
Cotterell, Ryan
Silfverberg, Miikka
Hulden, Mans
Publication Year :
2020

Abstract

A broad goal in natural language processing (NLP) is to develop a system that has the capacity to process any natural language. Most systems, however, are developed using data from just one language such as English. The SIGMORPHON 2020 shared task on morphological reinflection aims to investigate systems' ability to generalize across typologically distinct languages, many of which are low resource. Systems were developed using data from 45 languages and just 5 language families, fine-tuned with data from an additional 45 languages and 10 language families (13 in total), and evaluated on all 90 languages. A total of 22 systems (19 neural) from 10 teams were submitted to the task. All four winning systems were neural (two monolingual transformers and two massively multilingual RNN-based models with gated attention). Most teams demonstrate utility of data hallucination and augmentation, ensembles, and multilingual training for low-resource languages. Non-neural learners and manually designed grammars showed competitive and even superior performance on some languages (such as Ingrian, Tajik, Tagalog, Zarma, Lingala), especially with very limited data. Some language families (Afro-Asiatic, Niger-Congo, Turkic) were relatively easy for most systems and achieved over 90% mean accuracy while others were more challenging.<br />Comment: 39 pages, SIGMORPHON

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.11572
Document Type :
Working Paper