Hybrid plagiarism detection method for French language

Maryam Elamine, Seifeddine Mechti, Lamia Hadrich Belguith
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引用次数: 2

Abstract

With the growth of the content found throughout the Web, every information can be plagiarized. Plagiarism is the process of using the ideas of another without naming the source. Consequently, plagiarism detection is necessary but complicated as it is often facing significant challenges given the large amount of material on the World-wide-web and the limited access to a substantial part of them. In this paper, we present a novel plagiarism detection method for French documents. The proposed method combines the intrinsic and extrinsic aspects for plagiarism detection. We achieved good results with both approaches. For the extrinsic method, we achieved an accuracy of 62% for the first tests of the method. As for the intrinsic, we achieved an F-score of 0.328.
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法语混合抄袭检测方法
随着网络内容的增长,每一条信息都有可能被剽窃。抄袭是指使用他人的想法而不指明出处的过程。因此,抄袭检测是必要的,但也很复杂,因为它经常面临着巨大的挑战,因为万维网上有大量的材料,而且对其中很大一部分的访问是有限的。本文提出了一种新颖的法语文献抄袭检测方法。该方法结合了内在和外在两方面进行抄袭检测。两种方法都取得了很好的效果。对于外在方法,我们在该方法的第一次测试中获得了62%的准确性。对于内在,我们获得了0.328的f分。
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