Simple Features for Strong Performance on Named Entity Recognition in Code-Switched Twitter Data

WS 2018 Devanshu JainMaria KustikovaMayank DarbariRishabh GuptaStephen Mayhew

In this work, we address the problem of Named Entity Recognition (NER) in code-switched tweets as a part of the Workshop on Computational Approaches to Linguistic Code-switching (CALCS) at ACL{'}18. Code-switching is the phenomenon where a speaker switches between two languages or variants of the same language within or across utterances, known as intra-sentential or inter-sentential code-switching, respectively... (read more)

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