CLMay 5, 2020

Neural Syntactic Preordering for Controlled Paraphrase Generation

arXiv:2005.02013v11035 citations
AI Analysis

This work addresses the problem of controlled and diverse paraphrase generation for natural language processing applications, representing an incremental improvement over existing methods.

The paper tackles the challenge of generating diverse and interpretable paraphrases by using syntactic transformations to guide a neural model, resulting in a substantial increase in paraphrase diversity while maintaining quality comparable to baseline approaches.

Paraphrasing natural language sentences is a multifaceted process: it might involve replacing individual words or short phrases, local rearrangement of content, or high-level restructuring like topicalization or passivization. Past approaches struggle to cover this space of paraphrase possibilities in an interpretable manner. Our work, inspired by pre-ordering literature in machine translation, uses syntactic transformations to softly "reorder'' the source sentence and guide our neural paraphrasing model. First, given an input sentence, we derive a set of feasible syntactic rearrangements using an encoder-decoder model. This model operates over a partially lexical, partially syntactic view of the sentence and can reorder big chunks. Next, we use each proposed rearrangement to produce a sequence of position embeddings, which encourages our final encoder-decoder paraphrase model to attend to the source words in a particular order. Our evaluation, both automatic and human, shows that the proposed system retains the quality of the baseline approaches while giving a substantial increase in the diversity of the generated paraphrases

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