Initial Explorations of CCG Supertagging for Universal Dependency Parsing
2017-08-01CONLL 2017Unverified0· sign in to hype
Burak Kerim Akkus, Heval Azizoglu, Ruket Cakici
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In this paper we describe the system by METU team for universal dependency parsing of multilingual text. We use a neural network-based dependency parser that has a greedy transition approach to dependency parsing. CCG supertags contain rich structural information that proves useful in certain NLP tasks. We experiment with CCG supertags as additional features in our experiments. The neural network parser is trained together with dependencies and simplified CCG tags as well as other features provided.