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A deep learning approach to bilingual lexicon induction in the biomedical domain

机译:生物医学领域双语词典诱导的深入学习方法

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Bilingual lexicon induction (BLI) is an important task in the biomedical domain as translation resources are usually available for general language usage, but are often lacking in domain-specific settings. In this article we consider BLI as a classification problem and train a neural network composed of a combination of recurrent long short-term memory and deep feed-forward networks in order to obtain word-level and character-level representations. The results show that the word-level and character-level representations each improve state-of-the-art results for BLI and biomedical translation mining. The best results are obtained by exploiting the synergy between these word-level and character-level representations in the classification model. We evaluate the models both quantitatively and qualitatively. Translation of domain-specific biomedical terminology benefits from the character-level representations compared to relying solely on word-level representations. It is beneficial to take a deep learning approach and learn character-level representations rather than relying on handcrafted representations that are typically used. Our combined model captures the semantics at the word level while also taking into account that specialized terminology often originates from a common root form (e.g., from Greek or Latin).
机译:双语词典诱导(BLI)是生物医学域中的重要任务,因为翻译资源通常可用于一般语言使用情况,但通常缺乏特定于域的设置。在本文中,我们将BLI视为分类问题,并列车由经常性长短期内存和深馈通信网络组合组成的神经网络,以获得字级和字符级表示。结果表明,单词级和字符级表示各自改善了BLI和生物医学翻译挖掘的最先进的结果。通过利用分类模型中的这些单词级和字符级表示之间的协同作用来获得最佳结果。我们定量和定性评估模型。与依赖于词语级别表示相比,域的特定生物医学术语的翻译与字符级表示相比。采取深度学习方法并学习字符级表示是有益的,而不是依赖通常使用的手工制作表示。我们的组合模型捕获了单词级别的语义,同时还考虑到专业术语通常来自共同的根形式(例如,来自希腊语或拉丁文)。

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