Finding the way from ä to a: Sub-character morphological inflection for the SIGMORPHON 2018 Shared Task
This work addresses morphological inflection for computational linguistics, but it is incremental as it builds on prior methods.
The paper tackled morphological inflection by proposing a neural architecture that reduces learned edit operations through character equivalence classes, achieving language-agnostic performance evaluated across multiple languages.
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.