arXiv Open Access 2025

Large Language Model Data Generation for Enhanced Intent Recognition in German Speech

Theresa Pekarek Rosin Burak Can Kaplan Stefan Wermter
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Abstrak

Intent recognition (IR) for speech commands is essential for artificial intelligence (AI) assistant systems; however, most existing approaches are limited to short commands and are predominantly developed for English. This paper addresses these limitations by focusing on IR from speech by elderly German speakers. We propose a novel approach that combines an adapted Whisper ASR model, fine-tuned on elderly German speech (SVC-de), with Transformer-based language models trained on synthetic text datasets generated by three well-known large language models (LLMs): LeoLM, Llama3, and ChatGPT. To evaluate the robustness of our approach, we generate synthetic speech with a text-to-speech model and conduct extensive cross-dataset testing. Our results show that synthetic LLM-generated data significantly boosts classification performance and robustness to different speaking styles and unseen vocabulary. Notably, we find that LeoLM, a smaller, domain-specific 13B LLM, surpasses the much larger ChatGPT (175B) in dataset quality for German intent recognition. Our approach demonstrates that generative AI can effectively bridge data gaps in low-resource domains. We provide detailed documentation of our data generation and training process to ensure transparency and reproducibility.

Topik & Kata Kunci

Penulis (3)

T

Theresa Pekarek Rosin

B

Burak Can Kaplan

S

Stefan Wermter

Format Sitasi

Rosin, T.P., Kaplan, B.C., Wermter, S. (2025). Large Language Model Data Generation for Enhanced Intent Recognition in German Speech. https://arxiv.org/abs/2508.06277

Akses Cepat

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓