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On the Hallucination in Simultaneous Machine Translation

11 June 2024
M. Zhong
Kehai Chen
Zhengshan Xue
Lemao Liu
Mingming Yang
Min Zhang
    HILM
    LRM
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Abstract

It is widely known that hallucination is a critical issue in Simultaneous Machine Translation (SiMT) due to the absence of source-side information. While many efforts have been made to enhance performance for SiMT, few of them attempt to understand and analyze hallucination in SiMT. Therefore, we conduct a comprehensive analysis of hallucination in SiMT from two perspectives: understanding the distribution of hallucination words and the target-side context usage of them. Intensive experiments demonstrate some valuable findings and particularly show that it is possible to alleviate hallucination by decreasing the over usage of target-side information for SiMT.

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