Yuta Tsuboi, Yuya Unno, et al.
AAAI 2011
Paraphrase generation has been shown useful for various natural language processing tasks, including statistical machine translation. A commonly used method for paraphrase generation is pivoting [Callison-Burch et al. 2006], which benefits from linguistic knowledge implicit in the sentence alignment of parallel texts, but has limited applicability due to its reliance on parallel texts. Distributional paraphrasing [Marton et al. 2009a] has wider applicability, is more language-independent, but doesn't benefit from any linguistic knowledge. Nevertheless, we show that using distributional paraphrasing can yield greater gains in translation tasks. We report method improvements leading to higher gains than previously published, of almost 2 BLEU points, and provide implementation details, complexity analysis, and further insight into this method. ©2013 ACM.
Yuta Tsuboi, Yuya Unno, et al.
AAAI 2011
Ora Nova Fandina, Eitan Farchi, et al.
AAAI 2026
Ran Iwamoto, Kyoko Ohara
ICLC 2023
Chen-Yong Cher, Michael Gschwind
VEE 2008