Dynamic Feature Selection with Attention in Incremental Parsing
2018-08-01COLING 2018Unverified0· sign in to hype
Ryosuke Kohita, Hiroshi Noji, Yuji Matsumoto
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ReproduceAbstract
One main challenge for incremental transition-based parsers, when future inputs are invisible, is to extract good features from a limited local context. In this work, we present a simple technique to maximally utilize the local features with an attention mechanism, which works as context- dependent dynamic feature selection. Our model learns, for example, which tokens should a parser focus on, to decide the next action. Our multilingual experiment shows its effectiveness across many languages. We also present an experiment with augmented test dataset and demon- strate it helps to understand the model's behavior on locally ambiguous points.