2019
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Joint Approach to Deromanization of Code-mixed Texts
Rashed Rubby Riyadh
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Grzegorz Kondrak
Proceedings of the Sixth Workshop on NLP for Similar Languages, Varieties and Dialects
The conversion of romanized texts back to the native scripts is a challenging task because of the inconsistent romanization conventions and non-standard language use. This problem is compounded by code-mixing, i.e., using words from more than one language within the same discourse. In this paper, we propose a novel approach for handling these two problems together in a single system. Our approach combines three components: language identification, back-transliteration, and sequence prediction. The results of our experiments on Bengali and Hindi datasets establish the state of the art for the task of deromanization of code-mixed texts.
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Cognate Projection for Low-Resource Inflection Generation
Bradley Hauer
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Amir Ahmad Habibi
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Yixing Luan
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Rashed Rubby Riyadh
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Grzegorz Kondrak
Proceedings of the 16th Workshop on Computational Research in Phonetics, Phonology, and Morphology
We propose cognate projection as a method of crosslingual transfer for inflection generation in the context of the SIGMORPHON 2019 Shared Task. The results on four language pairs show the method is effective when no low-resource training data is available.
2018
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Combining Neural and Non-Neural Methods for Low-Resource Morphological Reinflection
Saeed Najafi
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Bradley Hauer
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Rashed Rubby Riyadh
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Leyuan Yu
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Grzegorz Kondrak
Proceedings of the CoNLL–SIGMORPHON 2018 Shared Task: Universal Morphological Reinflection
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Comparison of Assorted Models for Transliteration
Saeed Najafi
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Bradley Hauer
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Rashed Rubby Riyadh
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Leyuan Yu
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Grzegorz Kondrak
Proceedings of the Seventh Named Entities Workshop
We report the results of our experiments in the context of the NEWS 2018 Shared Task on Transliteration. We focus on the comparison of several diverse systems, including three neural MT models. A combination of discriminative, generative, and neural models obtains the best results on the development sets. We also put forward ideas for improving the shared task.