CrossAligner & Co: Zero-Shot Transfer Methods for Task-Oriented Cross-lingual Natural Language Understanding
Task-oriented personal assistants enable people to interact with a host of devices and services using natural language. One of the challenges of making neural dialogue systems available to more users is the lack of training data for all but a few languages. Zero-shot methods try to solve this issue...
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Zusammenfassung: | Task-oriented personal assistants enable people to interact with a host of
devices and services using natural language. One of the challenges of making
neural dialogue systems available to more users is the lack of training data
for all but a few languages. Zero-shot methods try to solve this issue by
acquiring task knowledge in a high-resource language such as English with the
aim of transferring it to the low-resource language(s). To this end, we
introduce CrossAligner, the principal method of a variety of effective
approaches for zero-shot cross-lingual transfer based on learning alignment
from unlabelled parallel data. We present a quantitative analysis of individual
methods as well as their weighted combinations, several of which exceed
state-of-the-art (SOTA) scores as evaluated across nine languages, fifteen test
sets and three benchmark multilingual datasets. A detailed qualitative error
analysis of the best methods shows that our fine-tuned language models can
zero-shot transfer the task knowledge better than anticipated. |
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DOI: | 10.48550/arxiv.2203.09982 |