基于底层结构的源代码抄袭等级分类方法的有效性

Oscar Karnalim, Setia Budi
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引用次数: 10

摘要

低级方法是一种检测源代码抄袭的新方法。在受控环境下,与基线方法(即依赖于源代码标记子序列匹配的方法)相比,该方法被证明是有效的。基于Faidhi & Robinson的剽窃水平分类法,我们评估了当前技术在低水平方法中的有效性;本研究采用真实的剽窃案例作为数据集。我们的评估表明,目前的低水平方法可以有效地处理大多数剽窃攻击。此外,在大多数剽窃水平上,它也优于其前身和基线方法。
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The Effectiveness of Low-Level Structure-Based Approach Toward Source Code Plagiarism Level Taxonomy
Low-level approach is a novel way to detect source code plagiarism. Such approach is proven to be effective when compared to baseline approach (i.e., an approach which relies on source code token subsequence matching) in controlled environment. We evaluate the effectiveness of state of the art in low-level approach based on Faidhi & Robinson's plagiarism level taxonomy; real plagiarism cases are employed as dataset in this work. Our evaluation shows that state of the art in low-level approach is effective to handle most plagiarism attacks. Further, it also outperforms its predecessor and baseline approach in most plagiarism levels.
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