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SynthDetoxM: Modern LLMs are Few-Shot Parallel Detoxification Data Annotators

Existing approaches to multilingual text detoxification are hampered by the scarcity of parallel multilingual datasets.

Year
2025
Venue
arXiv 2025
Authors
5
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arxiv.org/abs/2502.06394ARXIV-DEFAULT
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Abstract

Existing approaches to multilingual text detoxification are hampered by the scarcity of parallel multilingual datasets. In this work, we introduce a pipeline for the generation of multilingual parallel detoxification data. We also introduce SynthDetoxM, a manually collected and synthetically generated multilingual parallel text detoxification dataset comprising 16,000 high-quality detoxification sentence pairs across German, French, Spanish and Russian. The data was sourced from different toxicity evaluation datasets and then rewritten with nine modern open-source LLMs in few-shot setting. Our experiments demonstrate that models trained on the produced synthetic datasets have superior performance to those trained on the human-annotated MultiParaDetox dataset even in data limited setting. Models trained on SynthDetoxM outperform all evaluated LLMs in few-shot setting. We release our dataset and code to help further research in multilingual text detoxification.

Authors

5