Arc-Standard Spinal Parsing with Stack-LSTMs

نویسندگان

  • Miguel Ballesteros
  • Xavier Carreras
چکیده

We present a neural transition-based parser for spinal trees, a dependency representation of constituent trees. The parser uses Stack-LSTMs that compose constituent nodes with dependency-based derivations. In experiments, we show that this model adapts to different styles of dependency relations, but this choice has little effect for predicting constituent structure, suggesting that LSTMs induce useful states by themselves.

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تاریخ انتشار 2017