CLAIJun 30, 2021

A Conditional Splitting Framework for Efficient Constituency Parsing

arXiv:2106.15760v1713 citations
Originality Highly original
AI Analysis

This work addresses efficient parsing for NLP tasks, offering a unified approach for syntactic and discourse parsing with improved performance.

The paper tackles constituency parsing by introducing a seq2seq framework that uses conditional splitting decisions, achieving competitive results on syntactic parsing and outperforming state-of-the-art methods in discourse parsing.

We introduce a generic seq2seq parsing framework that casts constituency parsing problems (syntactic and discourse parsing) into a series of conditional splitting decisions. Our parsing model estimates the conditional probability distribution of possible splitting points in a given text span and supports efficient top-down decoding, which is linear in number of nodes. The conditional splitting formulation together with efficient beam search inference facilitate structural consistency without relying on expensive structured inference. Crucially, for discourse analysis we show that in our formulation, discourse segmentation can be framed as a special case of parsing which allows us to perform discourse parsing without requiring segmentation as a pre-requisite. Experiments show that our model achieves good results on the standard syntactic parsing tasks under settings with/without pre-trained representations and rivals state-of-the-art (SoTA) methods that are more computationally expensive than ours. In discourse parsing, our method outperforms SoTA by a good margin.

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