Old School vs. New School: Comparing Transition-Based Parsers with and without Neural Network Enhancement

In this paper, we attempt a comparison between "new school" transition-based parsers that use neural networks and their classical "old school" coun-terpart. We carry out experiments on treebanks fr ...

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