Syntactically controlled paraphrase generation has become an emerging research direction in recent years. Most existing approaches require annotated paraphrase pairs for training and are thus costly to extend to new domains. Unsupervised approaches, on the other hand, do not need paraphrase pairs but suffer from relatively poor performance in terms of syntactic control and quality of generated paraphrases. In this paper, we demonstrate that leveraging Abstract Meaning Representations (AMR) can greatly improve the performance of unsupervised syntactically controlled paraphrase generation. Our proposed model, AMR-enhanced Paraphrase Generator (AMRPG), separately encodes the AMR graph and the constituency parse of the input sentence into two d...
We investigate to what extent a hundred publicly available, popular neural language models capture m...
We introduce a new task of entailment relation aware paraphrase generation which aims at generating ...
This paper presents a paraphrase acquisition method that uncovers and exploits generalities underlyi...
International audienceWe study the automatic generation of syntactic paraphrases using four differen...
The soundness of syntax is an important issue for the paraphrase generation task. Most methods cont...
Paraphrase generation aims to rewrite a text with different words while keeping the same meaning. Pr...
Paraphrase generation is an important problem in NLP, especially in question answering, information ...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
This paper addresses the quality issues in existing Twitter-based paraphrase datasets, and discusses...
We present a simple and effective way to generate a variety of paraphrases and find a good quality p...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
Research on paraphrase has mostly focussed on lexical or syntactic variation within individual sente...
In this paper, we show how to create paraphrastic sentence embeddings using the Paraphrase Database ...
We present PARABANK, a large-scale English paraphrase dataset that surpasses prior work in both quan...
We investigate to what extent a hundred publicly available, popular neural language models capture m...
We introduce a new task of entailment relation aware paraphrase generation which aims at generating ...
This paper presents a paraphrase acquisition method that uncovers and exploits generalities underlyi...
International audienceWe study the automatic generation of syntactic paraphrases using four differen...
The soundness of syntax is an important issue for the paraphrase generation task. Most methods cont...
Paraphrase generation aims to rewrite a text with different words while keeping the same meaning. Pr...
Paraphrase generation is an important problem in NLP, especially in question answering, information ...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
This paper addresses the quality issues in existing Twitter-based paraphrase datasets, and discusses...
We present a simple and effective way to generate a variety of paraphrases and find a good quality p...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
A central challenge in semantic parsing is handling the myriad ways in which knowl-edge base predica...
Research on paraphrase has mostly focussed on lexical or syntactic variation within individual sente...
In this paper, we show how to create paraphrastic sentence embeddings using the Paraphrase Database ...
We present PARABANK, a large-scale English paraphrase dataset that surpasses prior work in both quan...
We investigate to what extent a hundred publicly available, popular neural language models capture m...
We introduce a new task of entailment relation aware paraphrase generation which aims at generating ...
This paper presents a paraphrase acquisition method that uncovers and exploits generalities underlyi...