CLJan 9

Pantagruel: Unified Self-Supervised Encoders for French Text and Speech

arXiv:2601.05911v11 citationsh-index: 16
Originality Incremental advance
AI Analysis

This provides a robust foundation for multimodal speech-text understanding in French, addressing the need for effective representation learning in this language domain.

The researchers tackled the problem of learning unified self-supervised encoders for French text and speech by introducing Pantagruel models, which learn contextualized target representations in feature space instead of modality-tailored targets, and achieved competitive or superior performance compared to strong French baselines across various downstream tasks.

We release Pantagruel models, a new family of self-supervised encoder models for French text and speech. Instead of predicting modality-tailored targets such as textual tokens or speech units, Pantagruel learns contextualized target representations in the feature space, allowing modality-specific encoders to capture linguistic and acoustic regularities more effectively. Separate models are pre-trained on large-scale French corpora, including Wikipedia, OSCAR and CroissantLLM for text, together with MultilingualLibriSpeech, LeBenchmark, and INA-100k for speech. INA-100k is a newly introduced 100,000-hour corpus of French audio derived from the archives of the Institut National de l'Audiovisuel (INA), the national repository of French radio and television broadcasts, providing highly diverse audio data. We evaluate Pantagruel across a broad range of downstream tasks spanning both modalities, including those from the standard French benchmarks such as FLUE or LeBenchmark. Across these tasks, Pantagruel models show competitive or superior performance compared to strong French baselines such as CamemBERT, FlauBERT, and LeBenchmark2.0, while maintaining a shared architecture that can seamlessly handle either speech or text inputs. These results confirm the effectiveness of feature-space self-supervised objectives for French representation learning and highlight Pantagruel as a robust foundation for multimodal speech-text understanding.

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