Few-Shot and Zero-Shot Learning for Historical Text Normalization

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningfagfællebedømt

Dokumenter

Historical text normalization often relies on small training datasets. Recent work has shown that multi-task learning can lead to significant improvements by exploiting synergies with related datasets, but there has been no systematic study of different multi-task learning architectures. This paper evaluates 63 multi-task learning configurations for sequence-to-sequence-based historical text normalization across ten datasets from eight languages, using autoencoding, grapheme-to-phoneme mapping, and lemmatization as auxiliary tasks. We observe consistent, significant improvements across languages when training data for the target task is limited, but minimal or no improvements when training data is abundant. We also show that zero-shot learning outperforms the simple, but relatively strong, identity baseline.
OriginalsprogEngelsk
TitelProceedings of the 2nd Workshop on Deep Learning Approaches for Low-Resource NLP (DeepLo 2019)
ForlagAssociation for Computational Linguistics
Publikationsdato2019
Sider104-114
DOI
StatusUdgivet - 2019
Begivenhed2nd Workshop on Deep Learning Approaches for Low-Resource NLP (DeepLo) - Hong Kong, Kina
Varighed: 3 nov. 20193 nov. 2019

Workshop

Workshop2nd Workshop on Deep Learning Approaches for Low-Resource NLP (DeepLo)
LandKina
ByHong Kong
Periode03/11/201903/11/2019

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