Corpus ID: 3254389

Intrinsic Plagiarism Detection Using Character n-gram Profiles

@inproceedings{Stamatatos2009IntrinsicPD,
  title={Intrinsic Plagiarism Detection Using Character n-gram Profiles},
  author={E. Stamatatos},
  year={2009}
}
  • E. Stamatatos
  • Published 2009
  • Computer Science
  • The task of intrinsic plagiarism detection deals with cases where no reference corpus is available and it is exclusively based on stylistic changes or inconsistencies within a given document. [...] Key Method In addition, we propose a set of heuristic rules that attempt to detect plagiarism-free documents and plagiarized passages, as well as to reduce the effect of irrelevant style changes within a document. The proposed approach is evaluated on the recently-available corpus of the 1 st Int.Expand Abstract
    166 Citations

    Figures, Tables, and Topics from this paper

    Intrinsic Plagiarism Detection using N-gram Classes
    • 21
    • PDF
    Intrinsic Plagiarism Detection with Feature-Rich Imbalanced Dataset Learning
    • 2
    • Highly Influenced
    Plagiarism detection using stopword n-grams
    • 127
    • PDF
    On the use of character n-grams as the only intrinsic evidence of plagiarism
    • 12
    • Highly Influenced
    Plagiarism detection based on structural information
    • 25
    • PDF

    References

    SHOWING 1-10 OF 17 REFERENCES
    Intrinsic Plagiarism Analysis with Meta Learning
    • 48
    • PDF
    Plagiarism Detection Without Reference Collections
    • 114
    • PDF
    Author Identification Using Imbalanced and Limited Training Texts
    • E. Stamatatos
    • Computer Science
    • 18th International Workshop on Database and Expert Systems Applications (DEXA 2007)
    • 2007
    • 69
    • PDF
    N-GRAM-BASED AUTHOR PROFILES FOR AUTHORSHIP ATTRIBUTION
    • 441
    Segmenting documents by stylistic character
    • 90
    • PDF
    Ensemble-based Author Identification Using Character N-grams
    • 56
    • PDF
    Plagiarism - A Survey
    • 342
    • PDF
    A survey of modern authorship attribution methods
    • 986
    • PDF
    A survey of modern authorship attribution methods
    • 322