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arxiv:2407.21646

Towards Achieving Human Parity on End-to-end Simultaneous Speech Translation via LLM Agent

Published on Jul 31
· Submitted by xuuuluuu on Aug 1
Authors:
,
,
Lu Xu ,

Abstract

In this paper, we present Cross Language Agent -- Simultaneous Interpretation, CLASI, a high-quality and human-like Simultaneous Speech Translation (SiST) System. Inspired by professional human interpreters, we utilize a novel data-driven read-write strategy to balance the translation quality and latency. To address the challenge of translating in-domain terminologies, CLASI employs a multi-modal retrieving module to obtain relevant information to augment the translation. Supported by LLMs, our approach can generate error-tolerated translation by considering the input audio, historical context, and retrieved information. Experimental results show that our system outperforms other systems by significant margins. Aligned with professional human interpreters, we evaluate CLASI with a better human evaluation metric, valid information proportion (VIP), which measures the amount of information that can be successfully conveyed to the listeners. In the real-world scenarios, where the speeches are often disfluent, informal, and unclear, CLASI achieves VIP of 81.3% and 78.0% for Chinese-to-English and English-to-Chinese translation directions, respectively. In contrast, state-of-the-art commercial or open-source systems only achieve 35.4% and 41.6%. On the extremely hard dataset, where other systems achieve under 13% VIP, CLASI can still achieve 70% VIP.

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Paper author Paper submitter
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Hi @xuuuluuu , congrats on this work!

Are you planning to share the dataset on the hub? See here for a guide: https://huggingface.co/docs/datasets/loading

Let me know if you need any help.

Cheers,
Niels
Open-source @ HF

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Good evening, @xuuuluuu !

Thank you for publishing this paper, it has really piqued my interest. Consequently, I’d like to ask you a few questions. Firstly, when and if the dataset, used for this model, becomes available to the public? Secondly, is it possible to learn which commercial models you’ve used to compare CLASI to? Finally, when and if CLASI becomes available in any form to the public (be it a ByteDance service or open-source)?

Cheers,
Alexander

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Paper author

Hi @Alexadid , the test dataset is open-sourced. We have included the details on how to get the data in our GitHub repo: https://github.com/byteresearchcla/RealSI.

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