Context Similarity Strategy for Text Data Plagiarism Detection

  • Authors

    • Durga Bhavani Dasari
    • Dr Venu Gopala Rao. K
    2018-05-31
    https://doi.org/10.14419/ijet.v7i2.32.13517
  • Plagiarism detection, Citation based plagiarism detection, context relevance, Semantic similarity.
  • Advent development of anti-plagiarism solutions has supported varied range of elementary forms of textual recycling, however, considering the magnum of content that is being generated, a tool alone might be ineffective in preventing complex forms of plagiarism. Some of the issues that are envisaged with the plagiarized articles in many of the open-access journals emphasize the point that critical deficiencies of varied kind of solutions that are existing aren’t being resourceful in identifying the manipulation that is taking place in the form of paraphrasing and editing. Manipulative editing has become a major menace even in the case of predatory journals and is leading to issues of publication ethics. Certain preventive strategies that have evolved in the recent past are relying on semantic solutions, comprehensive texts evaluation, graphics, reference lists, key words, digital technologies. It is right time for enforcing adherence to global editorial guidance and towards implementing a comprehensive set of strategies to address the issue of plagiarism.

     

     

  • References

    1. [1] McArthur, Thomas Burns, and Roshan McArthur, eds. Concise Oxford companion to the English language. Oxford University Press, USA, 2005.

      [2] Sun, Zhaohui, et al. "Systematic characterizations of text similarity in full text biomedical publications." PLoS One 5.9 (2010): e12704.

      [3] zu Guttenberg, Karl-Theodor. Verfassung und Verfassungsvertrag: Konstitutionelle Entwicklungsstufen in den USA und der EU. Duncker & Humblot, 2009.

      [4] Guttenplag wiki. Online Resource, Retrieved Apr. 10, 2011 from http://de.guttenplag.wikia.com, 2011.

      [5] Clough, Paul. "Plagiarism in natural and programming languages: an overview of current tools and technologies." (2000).

      [6] Fröhlich, Gerhard. "Plagiate und unethische Autorenschaften." (2006): 81-89.

      [7] Stein, Benno, Moshe Koppel, and Efstathios Stamatatos. "Plagiarism Analysis, Authorship Identification, and Near-Duplicate Detection PAN’07."

      [8] Monostori, Krisztián, Arkdy Zaslavsky, and Heinz Schmidt. "Document overlap detection system for distributed digital libraries." Proceedings of the fifth ACM conference on Digital libraries. ACM, 2000.

      [9] Hoad, Timothy C., and Justin Zobel. "Methods for identifying versioned and plagiarized documents." J. Am. Soc. Inf. Sci. 54.3 (2003): 203-215.

      [10] Rudman, Joseph. "The state of authorship attribution studies: Some problems and solutions." Computers and the Humanities 31.4 (1997): 351-365.

      [11] Stein, Benno, Nedim Lipka, and Peter Prettenhofer. "Intrinsic plagiarism analysis." Language Resources and Evaluation 45.1 (2011): 63-82.

      [12] Gipp, Bela, and Jöran Beel. "Citation Based Plagiarism Detection: A New Approach to Identify Plagiarized Work Language Independently." HT'10. 2010.

      [13] Potthast, Martin, et al. "Overview of the 2nd international competition on plagiarism detection." In Proceedings of the SEPLN’10 Workshop on Uncovering Plagiarism, Authorship and Social Software Misuse. 2010.

      [14] http://plagiat.htw-berlin.de/software/.

      [15] Potthast, Martin, et al. "An evaluation framework for plagiarism detection." Proceedings of the 23rd international conference on computational linguistics: Posters. Association for Computational Linguistics, 2010.

      [16] Weber-Wulff, Debora. "Test cases for plagiarism detection software." Proceedings of the 4th International Plagiarism Conference. 2010.

      [17] Maurer, Hermann, Frank Kappe, and Bilal Zaka. "Plagiarism-A Survey." Journal of Universal Computer Science 12.8 (2006): 1050-1084.

      Garfield, Eugene. "Citation indexes for science. A new dimension in documentation through association of ideas." International journal of epidemiology 35.5 (2006): 1123-1127
  • Downloads

  • How to Cite

    Bhavani Dasari, D., & Venu Gopala Rao. K, D. (2018). Context Similarity Strategy for Text Data Plagiarism Detection. International Journal of Engineering & Technology, 7(2.32), 14-17. https://doi.org/10.14419/ijet.v7i2.32.13517