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A Survey on Paraphrase Detection and Generation Techniques


Affiliations
1 Department of Computer Science and Applications, Sant Baba Bhag Singh University, Jalandhar, India
2 Department of Computer Applications, DAV University, Jalandhar, India
 

Whenever “the same thing,” need to be expressed using different ways or by various alternatives an automated paraphrase generation mechanism would be useful. One reason why paraphrase generation systems have been difficult to build is because paraphrases are hard to define. Although the strict interpretation of the term “paraphrase” is quite narrow because it requires exactly identical meaning, in linguistics literature paraphrases are most often characterized by an approximate equivalence of semantics across sentences or phrases. This paper presents a survey of paraphrase generation techniques for Indian and foreign languages.

Keywords

Paraphrasing, Sentence Simplification, Sentence Fusion, Sentence Compression.
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  • A Survey on Paraphrase Detection and Generation Techniques

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Authors

Ravinder Mohan Jindal
Department of Computer Science and Applications, Sant Baba Bhag Singh University, Jalandhar, India
Vijay Rana
Department of Computer Science and Applications, Sant Baba Bhag Singh University, Jalandhar, India
Sanjeev Sharma
Department of Computer Applications, DAV University, Jalandhar, India

Abstract


Whenever “the same thing,” need to be expressed using different ways or by various alternatives an automated paraphrase generation mechanism would be useful. One reason why paraphrase generation systems have been difficult to build is because paraphrases are hard to define. Although the strict interpretation of the term “paraphrase” is quite narrow because it requires exactly identical meaning, in linguistics literature paraphrases are most often characterized by an approximate equivalence of semantics across sentences or phrases. This paper presents a survey of paraphrase generation techniques for Indian and foreign languages.

Keywords


Paraphrasing, Sentence Simplification, Sentence Fusion, Sentence Compression.

References