跨语言SLU移植的语言风格和领域适应

Evgeny A. Stepanov, Ilya Kashkarev, Ali Orkan Bayer, G. Riccardi, Arindam Ghosh
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引用次数: 16

摘要

自动跨语言口语理解移植受到两个限制的困扰。首先,SLU通常是在有限的领域语料库上训练的。其次,语言对资源(例如对齐的语料库)很少或在风格上不匹配(例如新闻与对话)。我们提出了翻译系统输入和翻译系统输出的自动风格自适应实验。我们通过使用有限的域内和更大的web爬取的近域语料库将可用的并行数据适应目标领域来解决稀缺对齐数据的问题。采用基于递归神经网络的联合语言模型对SLU的输出进行重新排序,优化了SLU的性能。我们评估了端到端的SLU移植在近端和远端的语言对:西班牙语-意大利语和土耳其语-意大利语;在翻译质量和SLU性能方面都取得了显著的进步。
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Language style and domain adaptation for cross-language SLU porting
Automatic cross-language Spoken Language Understanding porting is plagued by two limitations. First, SLU are usually trained on limited domain corpora. Second, language pair resources (e.g. aligned corpora) are scarce or unmatched in style (e.g. news vs. conversation). We present experiments on automatic style adaptation of the input for the translation systems and their output for SLU. We approach the problem of scarce aligned data by adapting the available parallel data to the target domain using limited in-domain and larger web crawled close-to-domain corpora. SLU performance is optimized by reranking its output with Recurrent Neural Network-based joint language model. We evaluate end-to-end SLU porting on close and distant language pairs: Spanish - Italian and Turkish - Italian; and achieve significant improvements both in translation quality and SLU performance.
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