Data4ML | A prototype system for obtaining and managing training data for multilingual learning

Summary
It is difficult to build high quality machine translation systems for less-resourced languages, such as the minority languages of Europe. State-of-the-art machine translation is trained on large parallel corpora, texts and their translations. But such corpora are not available for less-resourced languages. We will provide a system for the rapid and inexpensive creation of new parallel corpora. Our PoC project will both produce an open-source prototype utilizing findings from the PI's ERC StG, and determine IPR and future funding. The key innovation of the prototype will be that it can be used by the less-resourced language community themselves. Current systems require extensive background in natural language processing. Allowing the community to create and curate parallel data has clear social benefits. The creation of high quality machine translation systems for less-resourced languages will allow for more content creation in these languages, playing a strong role in the preservation of these languages. Curated parallel data will also be useful in activities such as education and cultural heritage research. Government funding is available for digital language preservation for many of the 7000 languages spoken on Earth. Companies with online translation systems such as Google and DeepL/Linguee are not addressing this market, as the ROI is too low. It makes more sense to empower local communities to create such parallel data. We will carefully evaluate our prototype to ensure that it meets their needs. Along with the creation of the prototype, we will determine how best to structure the IPR to support future development. Consulting, which we have already carried out for the Sorbian community, and a certification scheme for users of our system are two possibilities we will consider, along with commercial machine translation and multilingual classification problems such as hate speech detection.
Unfold all
/
Fold all
More information & hyperlinks
Web resources: https://cordis.europa.eu/project/id/101113091
Start date: 01-10-2023
End date: 31-03-2025
Total budget - Public funding: - 150 000,00 Euro
Cordis data

Original description

It is difficult to build high quality machine translation systems for less-resourced languages, such as the minority languages of Europe. State-of-the-art machine translation is trained on large parallel corpora, texts and their translations. But such corpora are not available for less-resourced languages. We will provide a system for the rapid and inexpensive creation of new parallel corpora. Our PoC project will both produce an open-source prototype utilizing findings from the PI's ERC StG, and determine IPR and future funding. The key innovation of the prototype will be that it can be used by the less-resourced language community themselves. Current systems require extensive background in natural language processing. Allowing the community to create and curate parallel data has clear social benefits. The creation of high quality machine translation systems for less-resourced languages will allow for more content creation in these languages, playing a strong role in the preservation of these languages. Curated parallel data will also be useful in activities such as education and cultural heritage research. Government funding is available for digital language preservation for many of the 7000 languages spoken on Earth. Companies with online translation systems such as Google and DeepL/Linguee are not addressing this market, as the ROI is too low. It makes more sense to empower local communities to create such parallel data. We will carefully evaluate our prototype to ensure that it meets their needs. Along with the creation of the prototype, we will determine how best to structure the IPR to support future development. Consulting, which we have already carried out for the Sorbian community, and a certification scheme for users of our system are two possibilities we will consider, along with commercial machine translation and multilingual classification problems such as hate speech detection.

Status

SIGNED

Call topic

ERC-2022-POC2

Update Date

31-07-2023
Images
No images available.
Geographical location(s)
Structured mapping
Unfold all
/
Fold all
Horizon Europe
HORIZON.1 Excellent Science
HORIZON.1.1 European Research Council (ERC)
HORIZON.1.1.0 Cross-cutting call topics
ERC-2022-POC2 ERC PROOF OF CONCEPT GRANTS2
HORIZON.1.1.1 Frontier science
ERC-2022-POC2 ERC PROOF OF CONCEPT GRANTS2