Certainty Factor Model in Paraphrase Detection

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Date

2021

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Journal ISSN

Volume Title

Publisher

Pamukkale Univ

Open Access Color

GOLD

Green Open Access

Yes

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No
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Abstract

In this paper, we address the problem of uncertainty management in identification of paraphrase sentence pairs. Paraphrase sentences are simply sets/pairs of sentences that express the same facts and/or opinions using different words or order of words. We propose the use of certainty factor (CF) model in paraphrase detection. A set of succeeding paraphrase detection features (generic and distance based features) is built by filtering and this set is used as evidences in CF model. The CF model is evaluated by F1 and accuracy measures on Microsoft Research Paraphrase corpus. The results are compared to the well-known Bayesian reasoning. The experimental results showed that CF model is an alternating paraphrase detection method to Bayes model.

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Keywords

Paraphrase, Paraphrase detection, Certainty factor, Evidence, Evidence selection, Evidence selection, Paraphrase detection, Paraphrase, Certainty factor, Evidence

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WoS Q

Q3

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N/A
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N/A

Source

Pamukkale Unıversıty Journal of Engıneerıng Scıences-Pamukkale Unıversıtesı Muhendıslık Bılımlerı Dergısı

Volume

27

Issue

2

Start Page

139

End Page

150
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