Abstract
AbstractThe phenomenon of scientific burglary has seen a significant increase recently due to the technological development in software. Therefore, many types of research have been developed to address this phenomenon. However, detecting lexical, syntactic, and semantic text plagiarism remains to be a challenge. Thus, in this study, we have computed and recorded all the features that reflect different types of text similarities in a new database. The created database is proposed for intelligent learning to solve text plagiarism detection problems. Using the created database, a reliable plagiarism detection system is also proposed, which depends on intelligent deep learning. Different approaches to deep learning, such as convolution and recurrent neural network architectures, were considered during the construction of this system. A comparative study was implemented to evaluate the proposed intelligent system on the two benchmark datasets: PAN 2013 and PAN 2014 of the PAN Workshop series. The experimental results showed that the proposed system based on long short-term memory (LSTM) achieved the first rank compared to up-to-date ranking systems.
Publisher
Springer Science and Business Media LLC
Subject
Artificial Intelligence,Software
Reference60 articles.
1. “Council of Writing Program Administrators. (2003). Defining and avoiding plagiarism: The WPA statement on best practices. In Council of Writing Program Administrators. Retrieved from http://wpacouncil.org/files/wpaplagiarism-statement.pdf”.
2. Stamatatos and Efstathios (2011) Plagiarism detection using stopword n-grams. J Am Soc Inform Sci Technol 62(12):2512–2527
3. Sánchez-Vega F, Villatoro-Tello E, Montes-y-Gómez M, Rosso P, Stamatatos E, Villaseñor-Pineda L (2019) Paraphrase plagiarism identification with character-level features. Pattern Anal Appl 22(2):669–681
4. Sanchez-Perez M, Sidorov G, and Gelbukh A, (2014) A winning approach to text alignment for text reuse detection at PAN 2014– notebook for PAN at CLE”, In: Cappellato L, Ferro N, Halvey M, Kraaij W (eds) CLEF 2014 evaluation labs and workshop-working notes papers, 15–18 September, CEUR-WS.org, Shefeld, UK, pp 1004–1011
5. Roostaee M, Fakhrahmad SM, Sadreddini MH (2020) Cross-language text alignment: A proposed two-level matching scheme for plagiarism detection. Expert Syst Appl 160:113718
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献