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Finding the way from ae to a: Sub-character morphological inflection for the SIGMORPHON 2018 Shared Task

机译:寻找从自动驾驶到自动驾驶的方式:SIGMORPHON 2018共享任务的子字符形态变化

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In this paper we describe the system submitted by UHH to the CoNLL-SIGMORPHON 2018 Shared Task: Universal Morphological Reinflection. We propose a neural architecture based on the concepts of UZH (Makarov et al., 2017), adding new ideas and techniques to their key concept and evaluating different combinations of parameters. The resulting system is a language-agnostic network model that aims to reduce the number of learned edit operations by introducing equivalence classes over graphical features of individual characters. We try to pinpoint advantages and drawbacks of this approach by comparing different network configurations and evaluating our results over a wide range of languages.
机译:在本文中,我们描述了UHH提交给CoNLL-SIGMORPHON 2018共同任务:通用形态再思考的系统。我们提出了一种基于UZH概念的神经体系结构(Makarov等人,2017),在其关键概念中添加了新的思想和技术,并评估了参数的不同组合。最终的系统是一种语言不可知的网络模型,旨在通过在单个字符的图形特征上引入等效类来减少学习的编辑操作的数量。我们尝试通过比较不同的网络配置并评估各种语言的结果来找出这种方法的优缺点。

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