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Source-Critical Reinforcement Learning for Transferring Spoken Language Understanding to a New Language

机译:关键源强化学习,将口语理解能力转换为新语言

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To deploy a spoken language understanding (SLU) model to a new language, language transferring is desired to avoid the trouble of acquiring and labeling a new big SLU corpus. Translating the original SLU corpus into the target language is an attractive strategy. However. SLU corpora consist of plenty of semantic labels (slots), which general-purpose translators cannot handle well, not to mention additional culture differences. This paper focuses on the language transferring task given a tiny in-domain parallel SLU corpus. The in-domain parallel corpus can be used as the first adaptation on the general translator. But more importantly, we show how to use reinforcement learning (RL) to further finetune the adapted translator, where translated sentences with more proper slot tags receive higher rewards. We evaluate our approach on Chinese to English language transferring for SLU systems. The experimental results show that the generated English SLU corpus via adaptation and reinforcement learning gives us over 97% in the slot Fl score and over 84% accuracy in domain classification. It demonstrates the effectiveness of the proposed language transferring method. Compared with naive translation, our proposed method improves domain classification accuracy by relatively 22%, and the slot filling Fl score by relatively more than 71%.
机译:要将口头语言理解(SLU)模型部署到新语言,需要进行语言转换,以避免获取和标记新的大型SLU语料库的麻烦。将原始SLU语料库转换为目标语言是一种有吸引力的策略。然而。 SLU语料库由大量语义标签(插槽)组成,通用翻译人员无法很好地处理它们,更不用说其他文化差异。本文着重给出了一个很小的域内并行SLU语料库的语言传输任务。域内并行语料库可以用作通用翻译器的第一个改编。但更重要的是,我们展示了如何使用强化学习(RL)进一步微调适应的翻译器,在该翻译器中,具有更适当的位置标记的翻译句子将获得更高的奖励。我们评估了用于SLU系统的中文到英语语言转换的方法。实验结果表明,通过适应和强化学习生成的英语SLU语料库为我们提供了超过Fl的97%分数和超过84%的域分类准确率。它证明了所提出的语言转移方法的有效性。与朴素的翻译相比,我们提出的方法将域分类准确度提高了22%,将时隙填充Fl得分提高了71%以上。

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