Paraphrase recognition is a critical step for natural language interpretation. Accordingly, many NLP applications would benefit from high coverage knowledge bases of paraphrases. However, the scalability of state-of-the-art paraphrase acquisition approaches is still limited. We present a fully unsupervised learning algorithm for Web-based extraction of entailment relations, an extended model of paraphrases. We focus on increased scalability and generality with respect to prior work, eventually aiming at a full scale knowledge base. Our current implementation of the algorithm takes as its input a verb lexicon and for each verb searches the Web for related syntactic entailment templates. Experiments show promising results with respect to the ...
In a broad range of natural language pro-cessing tasks, large-scale knowledge-base of paraphrases is...
We propose an automatic method of extracting paraphrases from definition sentences, which are also a...
We present an approach for automatically learning paraphrases from aligned monolingual corpora. Ou...
Paraphrase recognition is a critical step for natural language interpretation. Accordingly, many NLP...
We introduce a new task of entailment relation aware paraphrase generation which aims at generating ...
We show in this article how an approach developed for the task of recognizing textual entailment rel...
Paraphrasing methods recognize, generate, or extract phrases, sentences, or longer natural lan-guage...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its eff...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its eff...
Automatic paraphrase discovery is an important task in natural language processing. Many systems use...
The paper presents a new approach to the problem of paraphrase identification. The new approach exte...
We add an interpretable semantics to the paraphrase database (PPDB). To date, the relationship betwe...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its effec...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
In a broad range of natural language pro-cessing tasks, large-scale knowledge-base of paraphrases is...
We propose an automatic method of extracting paraphrases from definition sentences, which are also a...
We present an approach for automatically learning paraphrases from aligned monolingual corpora. Ou...
Paraphrase recognition is a critical step for natural language interpretation. Accordingly, many NLP...
We introduce a new task of entailment relation aware paraphrase generation which aims at generating ...
We show in this article how an approach developed for the task of recognizing textual entailment rel...
Paraphrasing methods recognize, generate, or extract phrases, sentences, or longer natural lan-guage...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its eff...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its eff...
Automatic paraphrase discovery is an important task in natural language processing. Many systems use...
The paper presents a new approach to the problem of paraphrase identification. The new approach exte...
We add an interpretable semantics to the paraphrase database (PPDB). To date, the relationship betwe...
Unsupervised paraphrase acquisition has been an active research field in recent years, but its effec...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
In a broad range of natural language pro-cessing tasks, large-scale knowledge-base of paraphrases is...
We propose an automatic method of extracting paraphrases from definition sentences, which are also a...
We present an approach for automatically learning paraphrases from aligned monolingual corpora. Ou...