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arxiv 1911.03772 v2 pith:2MAIL36N submitted 2019-11-09 cs.CL

Code-Mixed to Monolingual Translation Framework

classification cs.CL
keywords frameworkcode-mixedmonolingualtranslationdataformlanguageproposed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The use of multilingualism in the new generation is widespread in the form of code-mixed data on social media, and therefore a robust translation system is required for catering to the monolingual users, as well as for easier comprehension by language processing models. In this work, we present a translation framework that uses a translation-transliteration strategy for translating code-mixed data into their equivalent monolingual instances. For converting the output to a more fluent form, it is reordered using a target language model. The most important advantage of the proposed framework is that it does not require a code-mixed to monolingual parallel corpus at any point. On testing the framework, it achieved BLEU and TER scores of 16.47 and 55.45, respectively. Since the proposed framework deals with various sub-modules, we dive deeper into the importance of each of them, analyze the errors and finally, discuss some improvement strategies.

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