221 research outputs found
Arc-Standard Spinal Parsing with Stack-LSTMs
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.Comment: IWPT 201
Structured Training for Neural Network Transition-Based Parsing
We present structured perceptron training for neural network transition-based
dependency parsing. We learn the neural network representation using a gold
corpus augmented by a large number of automatically parsed sentences. Given
this fixed network representation, we learn a final layer using the structured
perceptron with beam-search decoding. On the Penn Treebank, our parser reaches
94.26% unlabeled and 92.41% labeled attachment accuracy, which to our knowledge
is the best accuracy on Stanford Dependencies to date. We also provide in-depth
ablative analysis to determine which aspects of our model provide the largest
gains in accuracy
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